Title: Research in the real world: the users dilemma
1Research in the real world the users dilemma
2Overview of the Lecture
- Context for the examination of research
approaches - Examine aspects of the Qualitative Research
Defining, Attributes, Features Types - Examine aspects of the Quantitative Research
Defining, Attributes, Features Types - Reflect and summarise on each approach
3The users dilemma
- How do users get what they want?
- Traditional view of software development
- Analysis specification-development-implement-sig
noff - Happy users
- So why do researchers report that 70 of system
implementations fail - How do users know what they want?
- The Marco Polo effect
- How do you describe something you have never seen
before - The gambler effect
- How do you speculate how you may like to do
things in the future - The tigger effect
- How easy is it to ask for the wrong thing
4Some hard words
- Ontology What is
- epistemology what it means to know
- Why is this important?
- You need to know for yourself how you interpret
your world?
5Theoretical perspectives and what they teach us
- Positivist
- Reality consists of what is available to the
senses - Inquiry should be based upon scientific
observation and empirical action - Principles are shared between Natural and human
sciences and deal with facts not values - Interpretivist
- Reality is a shifting state culturally derived
and historically situated - Inquiry deals with the actions of individuals in
social settings - Principles suggest the emergence of unique
individual qualitative aspects
6What is Qualitative Research
- Qualitative research is a process of enquiry
that draws data from the context in which events
occur, in an attempt to describe these
occurrences, as a means of determining the
process in which events are embedded and the
perspectives of those participating in the
events, using induction to derive possible
explanations based on observed phenomena. - (Gorman Clayton, 1997)
7What happens in Qualitative Research?
- Data taken from context in which events occur
- Data collection first hand
- Attempt to describe occurrences
- Focus on process not snapshot
- Immersion leading to insight
- Induction
8Qualitative Research Induction
- Use of bottom-up approach to analyse and
interpret data - Research based on observed data
- Grounded theory
- that is based on established theories
9Qualitative Research Attributes 1
- Assumptions
- social construction of reality
- primacy of subject matter
- complexity of variables
- difficulty in measuring variables
- Purpose
- contextualisation
- interpretation
- understanding participant perspectives
10Qualitative Research Attributes 2
- Approach
- Theory generalising
- Emergence and portrayal
- Researcher as instrument
- Naturalistic
- Inductive
- Pattern Seeking
- Looking for pluralism and complexity
- Descriptive
- Researcher Role
- personal involvement and partiality
- empathetic understanding
11Key features of Qualitative Research (Hittleman
Simon)
- Data is collected within its natural setting.
Main data collection instruments are the
researchers themselves - Data are not numerical
- Focus on the process of an activity, not just its
outcomes - Data analysed in non-numerical manner. Outcomes
generate debate rather than verifying a predicted
outcome
12Qualitative Research Why is it important in IT
- Many of techniques and methods can be applied to
the requirements engineering process - Helps to place user at centre of design process
- Enables triangulation with quantitative methods
13Doing Qualitative Research
- Many ways of collecting and analysing data
- Historical
- Correlational
- Developmental
- Descriptive
- ...
14Qualitative Research Overview of Techniques
- Observation
- Interviewing
- Questionnaires
- Group Discussion
- Historical Study
- Content Analysis
- Ethnographical Research
15Qualitative Research Summary
- Increased knowledge of qualitative research
- Awareness of qualitative approaches relevance to
computing
16Quantitative Research What is it?
- The aim of quantitative research is not simply to
state that something has a relationship with
something else, but to state causality
17Quantitative Research
- Focuses on numerical and statistical data
- Positivist approach
- Recognising only positive/measurable facts and
observable phenomena - Empirical scientific approach
- Relying on experimentation and not untested
theory - Searches for causality and effect
18Quantitative Research Deduction
- Top-down approach
- The inferring of particular instances from a
general law - Working something out from something else -
Sherlock Holmes style
19Attributes of Quantitative Research 1
- Assumptions
- objective reality of social facts
- primacy of method
- possible to identify variables
- possible to measure variables
- Purpose
- generalisation
- prediction
- causal explanation
20Attributes of Quantitative Enquiry 2
- Approach
- Hypothesis based
- Manipulation and Control
- Uses formal instruments
- Experimentation
- Deductive
- Component analysis
- Seeking norms and consensus
- Reducing data to numerical indices
- Researcher Role
- detachment and impartiality
- objective portrayal
21Features of Quantitative Research 1
- Tests for cause and effect
- X causes Z to happen
- Y does not cause Z to happen
- Not simply that something has a relationship with
something else - Involves empirical studies
- Uses numerical and statistical techniques
22Features of Quantitative Research 2
- Assume primacy
- Researcher defines the research activity
- Relationships are measured
- Causal explanations are made
23Quantitative Research Descriptive Statistics
- Allows summaries of large quantities of
information - Should be easily comprehensible for reader
- Presentation is vital
- long strings of numbers
- tables, charts, graphs
- numerical techniques
- concise, appropriate text
24Quantitative Research Inferential Statistics
- Procedures for making generalisations about
characteristics of a population based on
information taken from that population - Powerful
- estimation
- hypothesis testing
- Methods and rules for organising and interpreting
data
25Quantitative Research Why is it important in IT
- Establishes metrics
- Report on process and system efficiency concerns
- Predict outcomes from developments
- Improve development and operational processes
- Basis for managing risk
- Analysis of incidents
- Identify causal relationships
- Plan
26Quantitative Research Summary
- Quantitative research is based on scientific
inquiry - Offers numerous techniques for data analysis
- Searching for causality and prediction
27Some questions to answer for next week
- Can you identify your epistemological stance?
- Have you identified a theoretical perspective
- Is your approach deductive or inductive
- Have you considered research methodology