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Management Support Systems and Decision-Making

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Title: Management Support Systems and Decision-Making


1
Management Support Systems and Decision-Making
2
Supporting Managers with Information Systems
3
Models and Methods for Management Support
  • To understand how computers support managers, it
    is necessary to understand what managers do.
  • It is difficult to produce a standard job
    description for all managers.

4
Fundamental Functions of Management
  • The traditional description of what managers do
    was first characterized by French industrialist
    Henri Fayol in his 1916 classic, Administration
    Industrielle et Generale. Fayol considered the
    manager's job as a composite of four separate
    functions
  • Planning
  • Controlling
  • Leading
  • Organizing

5
Fundamental Functions of Management - defined
  • Planning - establishing goals and selecting the
    actions needed to achieve them over a specific
    period of time.
  • Controlling - measuring performance against the
    planned objectives and initiating corrective
    action.
  • Leading - inducing the people in the organization
    to contribute to its goals
  • Organizing - establishing and staffing an
    organizational structure for performing business
    activities

6
Mintzbergs Studies of Managers
  • Myth 1 The manager is a reflective
    systematic planner.
  • Fact Study after study shows managers
    work at an unrelenting pace, that their
    activities are characterized by brevity, variety,
    and discontinuity, they are strongly oriented
    toward action, and dislike reflective activities.
  • Myth 2 The effective manager has no regular
    duties to perform.
  • Fact Managerial work involves
    performing a number of regular duties, including
    ritual and ceremony, negotiations, and processing
    of soft information that links the organization
    with its environment

7
Mintzbergs Studies of Managers
  • Myth 3 The senior manager needs aggregated
    information, which a formal management
    information system best provides.
  • Fact Managers strongly favor verbal
    media, telephone calls, and meetings over
    documents.
  • Myth 4 Management is, or at least is quickly
    becoming, a science and a profession.
  • Fact The managers' programs - to
    schedule time, process information, make
    decisions, and so on-remain locked deep inside
    their brains.

8
Classic Study of Managerial Work
  • The classic study of managerial work was done by
    Mintzberg, who divided the managers roles into
    three categories
  • 1. Interpersonal roles
  • 2. Informational roles
  • 3. Decisional roles

9
Management Roles
  • Interpersonal Roles
  • Figurehead, Leader, Liaison
  • Informational Roles
  • Monitor, Disseminator, Spokesman
  • Decisional Roles
  • Entrepreneur, Disturbance Handler, Resource
    Allocator, Negotiator

10
Mintzberg The Nature of Managerial Work
Formal Authority and Status
Interpersonal Roles
Informational Roles
Decisional Roles
11
Mintzbergs Management Roles
  • Interpersonal Roles
  • Figurehead - Carries out a symbolic role as head
    of the organization, performing duties of a legal
    or social nature.
  • Leader - In the most widely recognized managerial
    duty, the executive is responsible for motivating
    and "activation" of subordinates, as well as
    staffing, training, promoting.
  • Liaison - Develops and maintains a personal
    network of external contacts who provide
    information and favors.

12
Mintzbergs Management Roles
  • Informational Roles
  • Monitor - Seeks and receives a wide variety of
    special information (much of it current) to
    develop a thorough understanding of the
    organization and the environment. In this role,
    the executive serves as the nerve center of
    internal and external information about the
    organization.
  • Disseminator - Transmits information received
    from outsiders or subordinates to other members
    of the organization. Some information is
    factual, some involves interpretation and
    integration of diverse value positions of
    organizational influencers. All information is
    to guide subordinates in decision making.
  • Spokesman - Communicates information to outsiders
    on the organization's plans, policies, actions,
    results, etc. serves as the expert on the
    organization's industry.

13
Mintzbergs Management Roles
  • Entrepreneur - Searches the organization and
    environment for opportunities and initiates
    "improvement projects" to bring about change
    supervises design of certain projects as well.
  • Disturbance Handler - Responsible for corrective
    action when the organization faces important,
    unexpected disturbances.
  • Resource Allocator - Allocates organizational
    resources of all kinds-in effect the making or
    approval of all significant organizational
    decisions.
  • Negotiator - Represents the organization in major
    negotiations.

14
IS and Mintzbergs Roles
15
Information Support for Management
  • Early information systems mainly supported the
    informational roles.
  • The purpose of recent information systems is to
    support all three roles.
  • We will explore the information support required
    for all roles, beginning with the decisional
    roles.
  • The success of management depends on the
    execution of managerial functions such as
    planning, organizing, leading, and controlling.
    To carry out these functions, managers engage in
    the continuous process of making decisions.

16
Executive Activities and Information Support
  • Handling Disturbances (42) - A disturbance is
    something that happens unexpectedly and demands
    immediate attention, but it might take weeks or
    months to resolve.
  • Entrepreneurial Activity (32) - activities
    intended to make improvements that will increase
    performance levels. Improvements are strategic
    and long term in nature.
  • Resource Allocation (17) - Allocating resources
    within the framework of the annual and monthly
    planning tasks and budgets
  • Negotiations (3) resolve conflicts and disputes,
    either internal or external.
  • Other Activities (6)

17
Introduction to Decision-Making
  • A basic understanding of decision making is
    essential because most information systems are
    designed to support decision making in one way or
    another.
  • We will survey some models and concepts of
    decision making and methods for deciding among
    alternatives.
  • We will look at their relevance to information
    systems design.

18
Decision MakingPhases
  • Herbert A. Simon (1960) proposed the most famous
    model of the Decision-Making process.
  • 1. Intelligence
  • 2. Design
  • 3. Choice
  • Some models of decision making include a 4th
    step Implementation.
  • There is a flow activities from one phase, to the
    next. At any time there may be a return to a
    previous phase.

19
Simons ModelFlowchart of Decision Process
Intelligence
Design
Choice
20
Intelligence Phase
  • Searching the environment for conditions calling
    for decisions
  • Data inputs obtained, processed, examined for
    clues to identify problems or opportunities
  • Identify problems for opportunity situations
    requiring design and choice.
  • Scanning the environment, intermittently or
    continuously, is important.
  • Organizational objectives
  • search and scanning procedures
  • data collection
  • problem identification
  • problem classification
  • problem statement

21
Examples of the Intelligence Phase
  • Air traffic controller continuously scanning to
    detect problems in air space.
  • Each time you start your car, there is a
    conscious or unconscious scanning (listening,
    checking gauges, etc.).
  • Marketing executive makes periodic visits to key
    customers to review possible problems and
    identify new customer needs.
  • A plant manager reviews daily scrap report to
    check for quality control problems.
  • An executive reads the industry trade paper to be
    aware of events and changes in the environment.

22
Summary Intelligence Phase
  • Intelligence activities result in dissatisfaction
    with the current state or identification of
    potential rewards from a new state.

23
Design Phase
  • Inventing, developing, and analyzing possible
    courses of action
  • This involves processes to understand the
    problem, to generate solutions and test solutions
    for feasibility
  • Formulate a model.
  • Set criteria for choice.
  • Search for alternatives
  • Predict and measure outcomes

24
Choice Phase
  • Select an alternative from those available
  • Select and implement a choice
  • Solution to the model
  • sensitivity analysis
  • selection of best (good) alternatives(s)
  • plan for implementation (action)

25
Comment on Simons Model
  • Simons Model does not go beyond the choice
    phase.
  • There are no steps for implementation, or
    feedback from the results of the decision.
  • Although Simons model is the most famous, others
    have adapted it.
  • Our textbook provides a similar model

26
(No Transcript)
27
Alter Textbook Model
  • Decision-making is represented as a
    problem-solving process preceded by a separate
    problem-finding process.
  • Problem-solving is the use of information,
    knowledge, and intuition to solve a problem that
    ha previously been defined.

28
An Alternative Model Rubenstein and
Haberstrohs
  • 1. Recognition of problem or need for decision
  • 2. Analysis and statement of alternatives
  • 3. Choice among the alternatives
  • 4. Communication and implementation
  • 5. Follow-up and feedback of results

29
Slades Model of Decision Making
Identify Problem
Identify Alternatives
Choose Usual Action
Evaluate Alternatives
Choose Among Alternatives
Generate New Alternatives
Effect Choice
Abandon Problem
30
Summary - I
  • All models indicate the same basic ideas
  • 1. Problem finding - Identify situations where
    problems need to be solved.
  • 2 Problem formulation - clearly state the
    problem.
  • 3. Alternative Generation
  • 4. Evaluate Outcomes.
  • 5. Choice
  • 6. Implement
  • 7. Evaluate..

31
Summary -II
  • In the models of decision-making, the most
    important aspects of the intelligence and design
    phases are
  • I - Problem Finding
  • II - Problem Formulation
  • III - Alternative Generation

32
I. - Problem Finding
  • It is the difference between existing state and
    the desired state
  • The problem finder usually has an idea of the
    desired state ( a model)
  • Compared with the reality and differences noted
  • A Problem exists when there is a major difference

33
The role of models in decision-making
  • A major characteristic of decision-making is the
    use of models.
  • A model is a simplified representation or
    abstraction of reality.
  • It is usually simplified because reality is too
    complex to copy.
  • Basis idea is that analysis is performed on a
    model rather than on reality itself.

34
Pounds Categories of Models - Expectations
against which reality is measured
  • Historical - expectation based on extrapolation
    of past experience.
  • Planning - the plan is the expectation
  • Inter-organizational - Models of other people in
    the organization (e.g. superiors, subordinates,
    other departments, etc.)
  • Extra-organizational - models where the
    expectations are derived from competition,
    customers, professional organizations, etc.

35
Another classification of models
  • Iconic Models
  • Analog Models
  • Mathematical Models
  • Mental Models
  • These four types are distinguished according to
    their degree of abstraction, with iconic being
    the least abstract, and mental models being the
    most abstract.

36
Iconic and Analog Models
  • Iconic (scale) models - the least abstract model,
    is a physical replica of a system, usually based
    on a different scale from the original. Iconic
    models can scale in two or three dimensions.
  • Analog Models - Does not look like the real
    system, but behaves like it. Usually
    two-dimensional charts or diagrams. Examples
    organizational charts depict structure,
    authority, and responsibility relationships maps
    where different colors represent water or
    mountains stock market charts blueprints of a
    machine speedometer thermometer

37
Mathematical Models
  • Mathematical (quantitative) models - the
    complexity of relationships sometimes can not be
    represented iconically or analogically, or such
    representations may be cumbersome or time
    consuming.A more abstract model is built with
    mathematics.
  • Note recent advances in computer graphics use
    iconic and analog models to complement
    mathematical modeling.
  • Visual simulation combines the three types of
    models.

38
Mental Models
  • People often use a behavioral mental model.
  • A mental model is an unworded description of how
    people think about a situation.
  • The model can use the beliefs, assumptions,
    relationships, and flows of work as perceived by
    an individual.
  • Mental models are a conceptual, internal
    representation, used to generate descriptions of
    problem structure, and make future predications
    of future related variables.
  • Support for mental models are an important aspect
    of Executive Information Systems. We will discuss
    this in depth later.

39
II. - Problem Formulation
  • There is always the danger of solving the wrong
    problem.
  • Here, you try to clarify the problem so that you
    work on the right problem
  • Frequently, the process of clearly stating the
    problem is sufficient in other cases, reduction
    of complexity is needed.
  • Some strategies to use for reducing complexity
    and formulating a manageable problem are shown in
    the next slide

40
Problem Formulation Strategies
  • Determine problem boundaries (I.e. what is
    clearly part of the problem)
  • Examine changes that precipitated the problem
  • Break it down into smaller sub-problems
  • Focus on controllable elements
  • Relate to a previously solved class of problems,
    an analogy situation.
  • For example, recognizing that a problem is really
    an allocation problem allows the problem solver
    to look at other allocation problems and see
    what was done previously. The idea is to reduce
    complexity and rely on past experiences.

41
III. Alternative Generation
  • A significant part of the process of
    decision-making is the generation of alternatives
    to be considered in the choice phase.
  • This is a creative task and creativity can be
    taught
  • Can be enhanced by aids such as
  • scenarios
  • brainstorming
  • analogies
  • checklists, etc
  • Requires Knowledge of the problem and its
    boundaries (domain knowledge), as well as
    motivation to solve the problem.

42
Decision-Making Concepts
43
Decision Making Concepts
  • Decisions differ in a number of ways.
  • The differences affect the alternative generation
    process, and how a final choice will be made.
  • The differences can also affect how information
    systems and information technology can support
    the process at any one of the stages.
  • Four dimensions of decision types
  • I. Knowledge of Outcomes
  • II. level of structure/programmability
  • III. criteria for the decision
  • IV. level of decision impact

44
Decision Making Concepts IKnowledge of Outcomes
  • Outcome - what will happen if a particular
    alternative or course of action is chosen
  • Knowledge of outcomes is important with multiple
    alternatives
  • Three types of knowledge with respect to outcomes
    are usually distinguished
  • Certainty
  • Risk
  • Uncertainty

45
Knowledge of OutcomesThree Types
  • Certainty
  • Complete and accurate knowledge of outcome of
    each alternative. There is only one outcome for
    each alternative.
  • Risk
  • Multiple possible outcomes for each alternative
    and a probability can be assigned to each
  • Uncertainty
  • Multiple outcomes for each alternative and a
    probability cannot be assigned to each

46
Decision-Making Under Conditions of Certainty
Rationality
  • If the outcomes are known and the values of the
    outcomes are certain, the task of the
    decision-maker is to compute the optimal
    alternative or outcome.
  • Are we rational decision makers?
  • There is ongoing argument pro and con
  • People are said to be limited rationalists
  • We might look for a limited number of
    alternatives and decide

47
RationalityExample
  • A rational decision maker is expected to decide
    on the optimal alternative or outcome
  • The optimal alternative is one that is related to
    some optimization criteria such as minimize cost,
    for example
  • Thus the rational decision maker chooses the one
    that has the minimum cost
  • Consider purchasing two products that are
    identical in all respects and appear equal in
    value
  • All other things being equal, the rational
    decision maker chooses the one with the lower
    cost
  • Rare, since all things are rarely equal

48
Decision Making under Risk
  • Risk is when multiple outcomes of each
    alternative is possible and a probability of
    occurrence can be associated with each
  • In such cases, the general rule is to pick the
    one that has the highest expected value

49
RiskExpected Value
  • Which would you choose?
  • Action 1 offers 1 probability of a gain of
    15,000, or
  • Action 2 that offers 50 probability of a gain of
    400
  • Solution use Expected Value
  • Expected value is defined as the product of the
    outcome and the probability of the outcome
  • Expected value outcome x probability

50
RiskExpected Value (contd.)
  • Action 1 Expected Value 0.01 x 15,000 150
  • Action 2 - Expected Value. 0.5 x 400 200
  • Action 2 has the higher expected value
  • The rational decision maker chooses the strategy
    that has the higher expected value
  • OK strategy if the probability is known

51
Decision Making Under Uncertainty
  • Uncertainty is the situation where the outcomes
    are known, but the probabilities are unknown
  • One solution is to somehow assign the
    probabilities and then convert it to a problem
    under risk.
  • Other decision rules are to minimize regret and
    to use the maximum and minimum criteria. We will
    look at these later.
  • Uses Bayesian decision theory which recommends
    maximizing subjective expected utility, and on
    decision analysis which uses decision trees,
    payoff matrices, and influence diagrams to
    implement Bayesian Decision Theory.

52
Decision-Making Concepts II Programmed vs. Non
Programmed Decisions
  • We have reviewed this with the Gorry and Scott
    Morton Paper discussed earlier
  • Programmed Decisions - those that can be
    pre-specified by a set of rules or decision
    procedures
  • Non-programmed Decisions - those that do not have
    any pre-established decision rule or procedures

53
Criteria for Decision-Making III Normative vs.
Descriptive Models
  • Normative or Prescriptive - a model of decision
    making that tells the decision maker how to make
    a class of decisions. These have been developed
    by economists, management scientists, etc.
    Examples Linear programming, game theory,
    capital budgeting, statistical decision theory.
  • In normative models the criterion for selecting
    among alternatives is maximization or
    optimization of either utility or expected value.

54
Criteria for Decision-Making III Normative vs.
Descriptive Models
  • Descriptive - a model of decision making that
    describes how decision makers actually make
    decisions. They are used primarily by behavioral
    scientists.
  • Descriptive models introduce the concept of
    satisficing.
  • These two models introduce the Rational Approach
    as well as behavioral approaches.

55
Criteria for Decision-Making IV Level of
Decision Impact
  • What are the consequences of the Decision?
  • Will the consequences affect choice?
  • What are the consequences under conditions of
    certainty, risk, or uncertainty?

56
Management Support Systems and Decision-MakingPar
t II
57
Views or Models ofIndividual and
Organizational Decision-Making
58
Views or Models of Decision-Making
  1. The Rational Manager View
  2. The Satisficing, or Process-Oriented View
  3. The Organizational Procedures View
  4. The Political View
  5. The Individual Differences View
  6. The Garbage Can Model

59
I - The Rational Manager View
  • Oldest Theory to be proposed and studied in
    detail - it is a normative model.
  • Based Heavily on Theory of Economic Man developed
    in economics and applied to management.
  • Assumes organizational actors have complete
    knowledge of a decision scenario, and complete
    knowledge of their preferences.
  • An exhaustive search is made of all possible
    alternatives.

60
Rational Manager - 2
  • Consequences of alternatives are evaluated in
    terms of known preferences.
  • An optimal choice can be selected.
  • Proponents of cost-benefit analysis adopt this
    view.
  • Model is highly normative (I.e. what you should
    do), and has little descriptive support in true
    form.
  • It is impractical and over-idealized.
  • Influenced all other views of decision-making.

61
II. -The Satisficing Viewpoint
  • Simon was among first to attack the Rational
    Viewpoint.
  • Most decision situations provide limited
    knowledge on some aspect of the problem.
  • Impractical to think of generating all possible
    relevant alternatives for a situation.
  • The bounded rationality of the human mind would
    make all of this information unassimable.
  • Simon argues we tend to satisfice, or settle for
    a choice after a moderate amount of search.

62
Satisficing View - 2
  • Since search is not exhaustive, heuristics or
    rules of thumb are used to identify solutions
    that are good enough most of the time.
  • Heuristics reflect bounded rationality, i.e. a
    compromise between the demands of the problem,
    and the capabilities and commitment of the
    decision-maker.
  • Simons Model has had wide discussion.
  • His model, called Administrative Man, is a
    rejection of the Economic Man theory.

63
Satisficing View - 3
  • Simon also recognized the relationship between
    problem-solving strategies and the nature of the
    task, I.e. different tasks require different
    approaches.
  • This is apparent in his characterization of
    programmed and non-programmed decisions.
  • The Rational Manager or Economic Man
    viewpoint thinks basically all problems can use
    the same strategy.
  • Interestingly, some researchers look at
    decision-making in terms of personality or
    cognitive style. We discuss this as a separate
    viewpoint.

64
Sidebar Empirical Research
  • Empirical research has shown the importance of
    rationality and bounded rationality in
    organizational decision-making.
  • Rationality and bounded rationality may be viewed
    at opposite ends of a continuum with the decision
    setting playing a contingency role.
  • Threatening environments, high uncertainty,
    external control decreased rationality.
  • The more complex or turbulent the environment,
    the less rationality used.

65
Empirical Research - 2
  • Comprehensiveness - a desire to be rational,
    reflects how exhaustive and inclusive the
    decision process is in seeking alternatives.

HIGH
Comprehensiveness
LOW
STABLE
UNSTABLE
Environment
66
III. - Organizational Process View
  • Cyert and March extended Simons concept of
    bounded rationality to the organizational
    setting.
  • Organizational Decision-Making in terms of
  • formal and informal structure of the organization
  • standard operating procedures
  • channels of communication
  • Choice is made in terms of goals, on the basis of
    expectations.
  • The organization is a coalition of participants
    with disparate demands, focus of attention, and
    limited ability to attend to all problems
    simultaneously.

67
Organizational Process View - 2
  • Organizational decision-making is essentially a
    bargaining process among coalitions that produces
    agreements which are the organizations goals.
  • Organizational expectations arise from inferences
    from available information.
  • Choice emerges as the selection of the first
    alternative that expectations identify as
    acceptable in terms of goals.
  • Choice in the short-run is driven by standard
    operating procedures.
  • Choice in the long-run driven by organizational
    goals.

68
Organizational Process View - 3
  • Question Can you provide an example in an
    organizational setting that supports this
    viewpoint of decision-making?
  • This viewpoint is significantly influenced by
    separate functional areas of the participants.
    For example, accounting and marketing
    participants will view a problem in terms of
    their own functional area.
  • If a functional area has little to do with a
    decision-making situation, there may be little
    interest from that functional area.

69
IV. - The Political View
  • Here decision-making is a personalized bargaining
    process among organizational units.
  • Power and Influence determine the outcome of any
    situation.
  • The players act in terms of no consistent set of
    strategic objectives, but rather according to
    their personal goals, stakes, interests.
  • Organizational choice is the result of the
    pulling and hauling that is organizational
    politics.

70
The Political View - 2
  • One must understand the realities of power and
    the compromises and strategies necessary to mesh
    interests and constraints of the players.
  • Decisions are made to enhance the winner's
    conception of organizational, group, or personal
    interests.
  • Allison argued that Politics is a process or
    conflict and consensus Building.

71
The Political View - 3
  • An important sub-model is the concept of
    incremental change - because there are so many
    actors involved in an organizational decision
    setting, clear, rapid progress is rarely possible
  • The result of political bargaining and compromise
    is incremental change, i.e. decision-makers move
    to situations which are only slightly different
    from the current situation.
  • Lindbloom talked of this in The Science of
    Muddling Through (1959).
  • Muddling through is explicitly anti-utopian - it
    is the best we can do.

72
IV. The Individual Differences View
  • This view focuses on the individual
    decision-maker and his/her personalized
    strategies and abilities or style, information
    processing and problem-solving behavior.
  • Some individuals have specialized styles of
    decision-making which are effective in some
    contexts, and less so in others.
  • The outcome of the decision is substantially
    influenced by these characteristics, and any
    analytic aid (I.e. a DSS) must be consistent with
    the users style.
  • Such as DSS tool could be very valuable in
    complementing or extending the users style.
  • However, DSS incompatibility with the users
    problem-solving habits, strategies, and abilities
    will normally result in the DSS not being used.

73
Individual Differences - 2
  • Personal rationality is subjective, and behavior
    is determined by the manner in which individuals
    process information.
  • In the organizational context, managers develop
    their own mental models of problems and issues.
  • Decision-making can be a mixture of rationality
    and intuition, based heavily of experience and
    style.
  • MS and OR are attractive to an analytic,
    systematic style. They may be less attractive to
    managers with a more intuitive style.
  • Personality (what a person thinks) vs. Cognitive
    Style (how a person thinks).

74
Individual Differences - 3
  • Contrast
  • Analytic, systematic, methodological approach vs.
  • Intuitive, divergent,more global strategy
  • To problem solving.
  • Systematic thinkers tend to approach a problem by
    structuring it inn terms of some method which
    when followed through, leads to a likely
    solution. This is really what model building is
    making casual relationships explicit,
    articulating formal criteria, and then sequences
    of analysis.
  • Intuitive thinkers generally avoid committing
    themselves in this way. Their strategy is often
    one of hypothesis testing and trial-and-error.

75
Individual Differences - 4
  • Peter Keen notes the Intuitive Strategy should be
    respected
  • Each mode of evaluation has advantages and
    risks. In tasks such as production management,
    the Systematic thinker can develop a method or
    procedure that utilizes all his experience and
    that economizes on effort. An intuitive thinker
    in such a task may reinvent the wheel each time
    he deals with a particular problem. However, the
    Intuitive thinker is better able to approach
    ill-structured problems where the volume of data,
    the criteria for a solution or the nature of the
    problem itself do not allow the use of any
    pre-determined method.

76
Individual Differences - 5
  • Individuals validate information and perceive
    reality in different ways sensing vs.
    intuition thinking vs. feeling judging vs.
    perceiving.
  • What is information for one type definitely will
    not be information for another.
  • The job of a DSS designer is not to force all
    types of individuals to conform to one system,
    but to give each type the kind of information he
    is psychologically attuned to and will use most
    effectively.

77
Individual Differences - 6
  • Relate this viewpoint back to Mintzbergs study
    of Managerial work. He said the work was
    characterized by
  • Brevity of time available for one task
  • Fragmentation tasks often addressed in pieces
    over time
  • Variety - of problems
  • What does this tell us? Simply providing access
    to raw data for managers in not enough.
  • Designers should not assume their users are like
    themselves.

78
Cognitive Style Dimensions
  • Left brain
  • words
  • analytic
  • sequential
  • active
  • realistic
  • planned
  • Right brain
  • images
  • intuitive
  • simultaneous
  • receptive
  • imaginative
  • impulsive

79
Sidebar Empirical Research
  • Bobbit and Ford (1980) saw that executives had
    firm pre-dispositions about how the process of
    looking for ideas should unfold.
  • Executive attitudes are influences by belief
    structures and past experience - pragmatic.
  • Those with a low tolerance for ambiguity and high
    need for structure will adopt a decision process
    that has a narrow search zone.
  • Risk propensity and risk perception also play
    roles, with risk propensity dominating decision
    situations. (Sitkin and Pablo, 1992).

80
VI. - The Garbage Can Model
  • Proposed by Cohen, March, and Olsen in 1972.
  • Appropriate for highly complex, unstable, and
    ambiguous environments called organized
    anarchies.
  • Decisions result from a complex interaction
    between four independent streams of events
  • problems, solutions, participants, and choice
    opportunities.

81
Garbage Can Model - 2
  • The interaction of these events creates a
    collection of
  • choices looking for problems
  • issues and feelings looking for decision
    situations in which they might be aired
  • solutions looking for issues to which they might
    be the answer
  • decision-makers looking for work.
  • The four streams are independent in nature and
    interact in a random fashion.
  • A decision is made only when the four streams
    happen to interact.

82
Garbage Can Model - contd.
  • Good decisions are made when this happens at the
    right time.
  • Solutions represent the ideas constantly flowing
    through an organization.
  • Solutions are used to formulate problems.
  • Note that managers often do not know what they
    want until they have some idea of what they can
    get.

83
Individual Aspects of Decision-Making
84
Human Expectations
  • Humans display a variety of responses in decision
    making. Some are related to individual
    differences such as cognitive style, others are
    related to expectations.
  • Role of expectations can be partially explained
    by
  • theory of cognitive dissonance
  • commitment theory
  • theory of anticipatory regret

85
Theory of Cognitive Dissonance
  • propagated by Leon Festinger
  • explains behavior after a choice is made
  • Selected alternative has some negative features
    and rejected ones have some positive features
  • Decision maker has feelings of mental discomfort
    following a decision because of recognition of
    above
  • Second-Guessing
  • Ex. Purchase of car

86
Cognitive Dissonance - 2
  • Customers might need to be bolstered about their
    decision
  • Hence, sales procedures follow up a sale with a
    congratulatory letter to bolster the effect of
    cognitive dissonance reduction

87
Theory of commitment
  • If the person knows the decision is not revocable
    (firm commitment to decision), then decision time
    increases and processes will be more careful
  • Having spent time making decision, the decision
    maker is reluctant to change it

88
Theory of anticipatory regret
  • The decision maker anticipates the regrets that
    might occur
  • This inhibits the decision maker from making a
    decision without contemplating the consequences
  • Can be used to lessen post-decision regret
    thinking about consequences before they happen
    reduces the psychological impact when hey happen.

89
Behavioral Aspects of Organizational
Decision-Making
90
Behavioral Aspects of Organizational Decision
Making
  • Many Issues Related to the Organizational
    Procedures Viewpoint and the Political Viewpoint
  • quasi-resolution of conflict
  • uncertainty avoidance
  • problemistic search
  • organizational learning
  • incremental decision making

91
Quasi-Resolution of Conflict
  • An organization can be considered as coalition of
    members having different goals and unequal power
    to influence organizational objectives.
  • There are conflicts among the goals of the
    various members (e.g. production, sales,
    inventory).
  • Conflicts need to be resolved thru
  • local rationality
  • acceptable-level decision rules
  • sequential attention to goals

92
Uncertainty Avoidance
  • Organizations live in uncertain environments
  • This theory assumes that organizations will seek
    to avoid risk and uncertainty at the expense of
    expected value
  • A decision maker will be willing to accept a
    reduction in the expected value in exchange for
    an increase in the certainty of the outcome

93
Uncertainty Avoidance - 2
  • Thus, a decision maker will choose a 90 chance
    of making 10 over a 12 chance of making 100
  • The second alternative has a higher expected
    value
  • The decision though, is the first alternative
  • Major benefit - reduction in uncertainty

94
Uncertainty Avoidance - 3Legal Methods
  • Short-run feedback and reaction cycle
  • short feedback cycle allows frequent new
    decisions and thus reduce need to be concerned
    about future uncertainty.
  • Negotiated environment
  • organization seeks to control its environment
    through industry-wide conventional practices
    (sometimes just as restrictive or collusive
    behavior)
  • long-term supply contracts, etc.

95
Problemistic Search
  • Search for solutions is problem-stimulated
  • Little planned search for solutions not motivated
    by problems
  • Simple rules
  • search locally close to present symptom
  • if this fails, expand search to vulnerable areas
    before moving to other areas

96
Organizational Learning
  • Organizations exhibit adaptive behavior over time
  • They change their goals and revise problem search
    procedures on the basis of experience
  • Aspiration levels for goals are assumed to change
    in response to results obtained
  • Plans tend to reflect aspiration levels
  • Information systems are an important factor in
    reconciling achievement level and aspiration level

97
Incremental Decision Making
  • Decision making in organizations is confined to
    small changes from existing policy and procedures
  • Emphasis is on correcting or improving existing
    policies and actions
  • Emphasis on consensus
  • Called muddling through by Lindbloom

98
Decision Making Under Psychological Stress
99
Decision Making under Stress
  • based on the conflict-theory model of Janis and
    Mann (1977)
  • Decision making causes stress but here the
    characteristic is that all the alternative
    courses of action appear to have serious
    undesirable outcomes.
  • Symptoms of such conflict are
  • apprehensiveness
  • hesitation
  • vacillation
  • distress
  • Decisions are made using coping patterns

100
Coping Patterns
  • Used in emergency situations such as a flood or a
    fire
  • Can be extended to situations where there exist
    serious threats
  • Four Questions that determine the typical coping
    pattern.

101
Coping Patterns - Questions
  • Q1 Are the risks serious in the absence of
    change?
  • Q2 Are the risks serious if change is made?
  • Q3 Is it realistic to hope for a better
    solution?
  • Q4 Is there sufficient time to search and
    deliberate?

102
Coping Patterns - 3
  • If answer to Q. 1 is yes, then next is relevant
  • If answer to Q. 2 is yes, then go to Q. 3
  • If answer to Q. 3 is no, then the coping pattern
    may be defensive avoidance
  • If answer to Q. 3 and Q. 4 is yes, then the
    coping strategy can be a vigilant process of
    search, appraisal, and contingency planning.
  • If answer to Q. 4 is no, (e.g. a fire) then the
    coping pattern may be hypervigilance

103
Hypervigilance
  • Typical response to disasters
  • The decision maker focuses on the expected
    unfavorable consequences and fails to process
    information indicating that they may not happen.
  • Pressure is felt to take immediate action.
  • Hastily choose without considering the overall
    result or other possible actions.

104
Defensive Avoidance
  • This coping pattern is most appropriate for the
    design of information systems and decision
    support systems.
  • Marked by decision maker avoiding exposure to
    disturbing information, wishful thinking,
    distortion of information received and selective
    inattention.
  • If risk of postponing decision is low,
    procrastination is chosen.
  • If not, buck passing is tried.
  • Bolstering is used beforehand in the lack of
    complete information
  • After decision, bolstering is used to reduce
    cognitive dissonance.

105
Defensive Avoidance - 2
  • Some example bolstering tactics
  • Exaggeration of favorable consequences
  • minimizing unfavorable consequences
  • Denial of adverse feelings
  • Exaggeration of remoteness of action that will be
    required following decision
  • Assuming lack of concern by society (iit is a
    private decision).
  • Minimizing of personal responsibility.

106
Defensive Avoidance - 3
  • This pattern can also be observed in a group
  • Janis coined the term groupthink for collective
    defensive avoidance
  • E.g. industry that fails to react to vigorous
    price, quality and design competition by foreign
    competitors
  • Symptoms of groupthink - see next slide

107
Groupthink Symptoms
  • Illusion of invulnerability - The company is
    large and powerful and has customer loyalty.
  • Collective Rationalization - No one can match our
    research.
  • Belief in the inherent morality of the group -
    The managers are the best trained and preserve
    traditional values.
  • Stereotypes of outgroups - The competitors
    products are inferior. They can not provide
    service.

108
Groupthink Symptoms - contd.
  • Direct pressure on dissenters -demotion or firing
    of managers who disagree on a subject.
  • Self-censorship - The subject of foreign
    competition is never put on the table by anyone
    in the group.
  • Illusion of unanimity - No one is objecting, so
    everyone must agree that foreign competition is
    not serious.
  • Self-appointed mind guards - evidence that
    contradicts the thinking of the group is removed
    as it moves up the organization.

109
Groupthink Example PATCO Strike of 1981
  • Illusion of Vulnerability - The air system can
    not survive long without air traffic controllers
    (ATCs). Plans to replace them will not work.
  • Collective Rationalization - The oath not to
    strike wasnt binding in this case, even though a
    strike was illegal.
  • Belief in Inherent morality of the group - The
    strike for higher pay is morally justified
    because ATCs are responsible for more lives now.
  • Stereotypes of Outgroups - The government is a
    typical bureaucracy. Reagan is just bluffing on a
    threat to fire us. No one has listened to our
    complaints.

110
Groupthink Example PATCO Strike of 1981 - contd.
  • Direct Pressure of Dissenters - John Feydon,
    President of PATCO until 1980, forced to resign
    because he did not support strike.
  • Self-censorship - Quotes such as Doubts seemed
    in the minority...The union is tight, almost
    like a family. 20 of strike force returned to
    work.
  • Illusion of Unanimity - Other unions offered
    token support for PATCO. AFL/CIO privately was
    critical of PATCOs strike.
  • Self-Appointed Mind Guards - Negotiators claimed
    there was no alternative but to strike.

111
Deciding Among Alternatives
112
Introduction to Methods
  • Numerous method help one decide among
    alternatives.
  • They generally assume that all alternatives are
    known or can be know, even though the search
    process often stops well before all feasible
    alternatives have been examined.

113
Optimization Techniques Under Certainty
  • All alternatives and their outcomes are known.
    The computational problem is to choose which one
    is optimal for a particular objective function
  • Use optimization techniques
  • systems of equations
  • linear programming
  • integer programming
  • dynamic programming
  • queuing models
  • inventory models, etc.
  • Capital budgeting analysis
  • Break-even Analysis

114
Mathematical Programming
  • Mathematical Programming is the name for a family
    of tools designed to solve managerial problems in
    which the decision maker must allocate scarce (or
    limited) resources among various activities to
    optimize a measurable goal.
  • Example Distribution of machine time (the
    resource) among various products (the activities)
    is a typical allocation problem

115
Sample Linear Programming
  • XYZ corporation makes servers. A decision must
    be made. How many servers should be produced
    next month in the Boston plant? Two types of
    servers are considered S-7 requires 30 hours of
    labor and 10,000 in materials S-8 requires 50
    hours of labor and 15,000 in materials. The
    profit contribution of S-7 is 8,000 whereas that
    of S-8 is 12,000. The plant has a capacity of
    20,000 hours per month while the material budget
    is 8,000,000 per month. Marketing requires that
    at least 100 units of S-8 be produced.
  • Problem How many units of S-7 and S-8 should
    be produced?

116
The Model
  • Decision Variables X units of S-7 to be
    produced Y units of S-8.
  • Result Variable The total profit. The
    objective is to maximize total profit.
  • Objective function
  • Total Profit 8,000X 12,000Y
  • Constraints
  • Labor Constraint 30X 50Y lt 20,000 (in hours)
  • Budget Constraint 10,000X 15,000Y lt 8,000,000
    (in dollars)
  • Marketing Requirement X gt 100 (in units).

117
Optimization Techniques
  • Computer algorithms and programs are readily
    available to handle many problems of this class.
  • The major problem is to construct the model
    correctly.
  • Reference other books on Optimization,
    Mathematical Programming, or Operations Research,
    or Management Science for a further discussion of
    these models and their application.

118
Statistical Decision Theory
  • Decision Theory provides a rational framework
    for choosing between alternative courses of
    action when the consequences resulting from
    choice are imperfectly known.
  • The necessity of making decisions in the face of
    uncertainty is an integral part of our lives.
  • The theory provides techniques for mathematically
    evaluating potential outcomes of alternative
    actions in a given decision situation.
  • In all cases, the decision-Maker has an objective
    (e.g. maximize profit).
  • Two methods Payoff Matrix and Decision Tree.

119
Statistical Decision TheoryPayoff Matrix
  • The payoff matrix consists of rows for the
    alternatives or strategies available and columns
    for the conditions that affect the outcomes
  • Each cell contains the payoff (the consequences,
    perhaps in dollars) if that strategy is chosen
    and that state occurs
  • If it is known with certainty which state will
    prevail, then choose the strategy that has the
    highest payoff for that state
  • This is simply the strategy of maximizing
    expected utility.

120
General Payoff Matrix
States of Nature
n1
n2
Strategies
n3
n4
S1
S2
S3
121
Example 1 The Anniversary Problem
You are suddenly driving home from work in the
evening when you suddenly recall that your
wedding anniversary comes about this time of
year. In fact, it seems quite probable, (but
not certain), that it is today. You can still
stop at the local florist and buy a dozen roses,
or you may go home empty-handed and hope the
anniversary lies in the future. What do you do?
122
Possible Outcomes (States of Nature)
Decision Alternatives (Strategies)
It IS NOT Your Anniversary
It IS Your Anniversary
SPOUSE SUSPICIOUS AND YOU ARE OUT 50
Buy Flowers
DOMESTIC BLISS
Do Not Buy Flowers
SPOUSE IN TEARS AND YOU IN DOGHOUSE
STATUS QUO
Anniversary Problem Payoff Matrix
123
Decision Tree for Anniversary Problem
DOMESTIC BLISS
Anniversary
NOT Anniversary
Buy Flowers
50 LOSS ANDSUSPICIOUS WIFE
DOGHOUSE
Anniversary
Do Not Buy Flowers
NOT Anniversary
Decision Point
STATUS QUO
Resolution of Uncertainty
124
Example 2 Fast Service Restaurant
An entrepreneur is deciding among three
alternatives for a fast-service restaurant that
she owns (1) leave as is (2) refurbish it to
improve layout (3) or re-build completely to add
capacity and improve layout.
There are three significant, independent
conditions (assume only one can occur) that
affect the possible profit (payoff) from each
alternative strategies. These conditions are
(1) a competitor may open on a nearby property
(2) a proposed highway re-routing will change
the traffic passing by (3) conditions will stay
approximately the same as they are. What should
the entrepreneur do?
125
Payoff Matrix (in Thousands of )
New Competitor 0.20
Highway Rerouting 0.30
Same - 0.5
Strategies
Do Nothing
2
0
-1
Refurbish
4
-3
3
7
2
Rebuild
-10
126
Analysis with Knowledge
  • If we assume conditions remain the same, Rebuild
    is the best strategy. (Payoff 7,000).
  • If probabilities are assigned, using a criteria
    of maximizing expected value
  • Do Nothing (0.5)(2) (.2)(0) (0.3)(-1) 0.7
    or 700
  • Refurbish (0.5)(4) (0.2)(3) (0.3)(-3) 1.70
    or 1,700
  • Rebuild (0.5)(7) (0.2)(2) (0.3)(-10) 0.90
    0r 900
  • Therefore, refurbishment is the best choice.
  • Remember here that the probabilities of various
    conditions or states of nature are assumed to be
    known with reasonable exactness in the above
    example.

127
Statistical Decision Theory Imperfect Knowledge
of Consequences
  • What is the decision maker is very uncertain
    about the probabilities of the various conditions
    that may occur.
  • There are some rules that can be used for
    deciding among the alternatives, based on the
    individual preferences (cognitive style) of the
    decision maker.
  • Define Regretsthe differences between the best
    payoff for a state of nature,and the other
    outcomes. Consider three separate strategies
  • Minimize regret
  • Maximin Rule
  • MaxiMax Rule

128
Statistical Decision Theory Imperfect Knowledge
of Consequences
  • minimize regret -select strategy which minimize
    the sum of regrets for the strategy
  • maximin - Select strategy which has highest
    payoff if the worst state of nature occurs
    (pessimistic).
  • maximax - Select strategy which has highest
    payoff if most favorable state of nature occurs
    (optimistic).
  • Each one of these rules has been criticized in
    the literature. They have disadvantages if
    applied as a general decision rule. You must
    decide if the rule is appropriate for the
    situation.

129
Regret Definition
  • The regrets are the differences between the best
    payoff for a state of nature and the other
    outcomes.
  • To compute a matrix of regret, subtract the value
    in each entry in a column from the highest value
    in the column.
  • Sum the rows to compute the regrets for each
    action or strategy (assuming the payoff matrix
    has columns for states and rows to show
    strategies)

130
Sample Calculation of Regret Matrix
N1 N2 N3
2
0
-1
S1
Original Payoff Matrix
3
-3
S2
4
2
-10
S3
7
N1 N2 N3
5
3
0
S1
8
Regret Matrix
0
2
S2
5
3
10
1
9
S3
0
131
Analysis with Imperfect Knowledge
  • Minimize Regret
  • The action which minimizes regret is REFURBISH.
  • Do Nothing 5 3 0 8
  • Refurbish 3 0 2 5
  • Rebuild 0 1 9 10
  • This assumes equal probabilities for
    outcomes. An expected regret for each strategy
    can also be computed by multiplying each regret
    by its probability.

N1-0.5 N2-0.2 N3-0.3
2.5
.6
0
S1
3.1
Expected Regret Matrix
0
.6
S2
2.1
1.5
.2
2.7
S3
0
2.9
132
Original Payoff Matrix (again) (in Thousands of
)
New Competitor 0.20
Highway Rerouting 0.30
Same - 0.5
Strategies
Do Nothing
2
0
-1
Refurbish
4
-3
3
7
2
Rebuild
-10
133
Analysis with Imperfect Knowledge - 2
  • Maximin Rule Select the strategy which will
    have the highest utility payoff (max) if the
    worst state of nature (min) occurs. In other
    words, identify the state of nature with the
    worst payoff and choose the strategy with the
    least unfavorable payoff, given that state.
  • Essentially a pessimistic view, this results in
    choosing to do nothing because the worst case
    occurs with rerouting and do nothing is the best
    strategy for this worst case.

134
Analysis with Imperfect Knowledge - 3
  • Maximax Rule Select the strategy or alternative
    which provides greatest utility payoff (max) if
    the most favorable state of nature (max) occurs.
    In other words, identify the state of nature with
    the best payoff and choose the strategy with the
    best payoff, given that state.
  • Essentially an optimistic view, this results in
    choosing the strategy of rebuilding because the
    payoff of 7 is best.

135
Statistical Decision Theory
  • When decisions must be made under uncertainty,
    the emphasis is on Bayesian decision theory which
    recommends maximizing subjective expected
    utility.
  • Bayesian decision theory provides a framework in
    which all available information is used to deduce
    which of the decision alternatives is best
    according to the decision makers preferences.
  • Distinguish between a good decision and a good
    outcome

136
The Concept of Utility
  • Not all outcomes can be compared in terms of
    dollars. Dollars and other measures work well in
    a narrow range of values, but not at extremes
    (e.g. overtime pay).
  • Here money is used as a substitute measure of the
    outcomes utility.
  • Whereas utility may be linear in a certain range
    in comparison to money, it generally is not under
    all ranges.

137
Utility vs. Money
UTILITY
MONEY
The Linear Assumption of Money for Utility in
this Narrow Range
138
Utility vs. Money - 2
  • For example, the utility of getting a fairly
    large sum is larger than the utility computed
    from a set of small amounts.
  • In other words, 11utile, however, 100,000 in
    one payment is larger than 100,000 utiles for 1.
  • After rising steeply, the curve flattens out
    because the utility of substantially more money
    is not great For the average individual, 20
    million has not much more utility than 10
    million.
  • The loss side of the curve behaves in an opposite
    fashion.
  • A large loss has significantly greater negative
    utility than merely the sum of disutilities for
    smaller losses.

139
Utility vs. Money - 3
  • This helps explain attitudes toward insurance.
    Assume the following payoff matrix for an
    insurance problem
  • FIRE NO FIRE E/V
  • (0.003) (0.997)
  • INSURANCE -240 -240 -240
  • NO INSURANCE - 50,000 0
    -150
  • Looking at strictly dollars, the rational person
    assumes insurance is not a good value. However,
    the insurance loss of 50,000 may have a
    disasterous consequence (say -150,000 utiles)
    while the insurance has 240 utiles.

140
Utility vs. Money - 4
  • Consider the same payoff matrix measuring utiles
    instead of dollars
  • FIRE NO FIRE E/V
  • (0.003) (0.997)
  • INSURANCE - 240 ut. -240 ut
    -240 ut
  • NO INSURANCE -150,000 ut 0 -
    450 ut
  • This example looks at only one value property
    (money). In many cases there is more than one
    value property and various combinations of the
    properties yield the same utility. These
    differences can be represented by indifference
    curves.

141
Indifference Curves
  • Any two possible outcomes can be compared, and
    generally one can say which one is preferred.
  • In some cases they may be equally desirable, in
    which case you are indifferent.
  • Example You may prefer a weeks vacation in
    Florida rather than paid double time to work a
    week extra.
  • There is a tradeoff here between two
    value-properties. (e.g. leisure time vs. money).

142
Indifference Curves
Money
I3
I2
I1
Leisure Time
143
Other Alternative Selection Techniques
  • Ranking, Weighting, or Elimination by aspects -
    often used to evaluate competitive bids.
  • Game Theory (for conflict bargaining) - when one
    decision unit (player) gains, the other loses.
  • Classical Statistical Inference
  • sampling
  • probability distributions
  • regression and correlation analysis
  • testing of hypotheses

144
Rational Choice and the Framing of Problems
  • Alternative descriptions of a problem often give
    rise to different preferences.
  • Example Consider the following statistical
    information provided on two alternative
    treatments of lung cancer. The same statistics
    are presented in terms of survival rates and in
    terms of mortality rates to two groups of
    respondents.

145
Rational Choice and
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