Title: Problem Recognition
1The Research Process
Problem Recognition
Problem Structuring
Research Design
Data Collection (Surveys, Requirements
Elicitation, experiments, focus groups etc.)
(PILOT STUDY followed the FULL SCALE study)
Data Analysis, generating, interpreting results
Writing up results and recommendations
Implementation
2Problem Recognition/Selecting the Research Topic
- Personal Interest
- Suggested by Research/Practitioner Literature
- Emergence of a new technology
- Perceptions of discrepancy between desired and
actual state - Management Directives and Policies
- Social Concerns/Popular Issues
3Conceptual Framewrok
- Identify Key Concepts
- Define the Key Concepts
- Operationalise the Concepts
- Explore systematic relationship between the
concepts.
4Specific Research Questions
- Main Considerations
- -Specificity and answerability can the questions
be answered through research? - Scale and Scope in relation to needs, available
resources. - Resource Adequacy in Relation to available time.
5Research Strategy and Design
- Data gathering methods
- - Type of method to be used.
- - Type of data to be gathered.
- - Pilot Study
- Data analysis methods
- Budget and timetable
- Reporting the results
6Employee Self-Service (ESS) Module of PeopleSoft
ERP system (Univ. of Sydney)
- System Development and Testing completed.
- Need to decide on university-wide roll out and a
strategy doing this.
7Reducing Cycle Time for New Product Development
at Bosch
- Average cycle time for new product
development/product redesign was 18 months need
to compress it to 9-12 months
83G Wireless Applications for the Univ. of Sydney
- 3G wireless technology emerging as the foundation
for mobile applications in a range of domains. - The Major Projects Group at the university wants
to - Make an assessment of the feasibility and
viability of the technology and the applications
it can offer - Identify potential applications that the uni
might benefit from. - Develop business cases for these applications
9Decision Support System application for Johnson
Johnson
- Need to decide on how much to spend on a variety
of special promotions at large retail outlets of
JJ such as Woolworths, Coles. - Prefer a system solution to the problem.
10Primary Data
- Data gathered and assembled for the specific
research project at hand. - Primary data gathered through observations, focus
groups, experiments, field studies etc. - Format could be numeric, text, image, video,
sound recordings. - Source may be internal or external to an
organisation.
11Secondary Data
- Secondary data are data collected and assembled
for a purpose other than the project at hand, but
may be useful for the project. - Source may be internal or external to an
organisation. - Typical sources include
- Australian Bureau of Statistics, Australian Stock
Exchange, Reserve Bank of Australia, OECD, UN,
National Archives, AC Nielsen (UPC scanner data),
Austrade etc.
12Primary Data
- Research Methods for collecting Primary Data
- Exploratory Focus Groups, Pilot Studies.
- Sample surveys
- Experimental studies
13Definitions
- Respondent the person who answers an
interviewers questions or the person who
provides answers to written/printed questions in
self-administered surveys. - Sample survey indicates that the purpose of
contacting the respondents is to obtain a
representative sample of a target
populationmethod of data collection based on
responses from a representative sample of
individuals from a population of interest.
14Types of Errors in Survey Data
- Random Sampling Error
- Systematic Error (Bias) arising from some
imperfect aspect of the research design or errors
in the execution of the research.
15Systematic Error
- Non-response error
- Self-selection bias
- Response Bias
- - Deliberate Falsification
- - Unconscious Misrepresentation
- - Acquiescence Bias
- - Interviewer Bias
- - Social Desirability Bias
16Types of surveys
- Cross sectional
- Longitudinal
17Advantages of Secondary Data
- In some situations, useful for clarification and
to define a research problem more sharply
exploratory research - Lower cost of research
- Time saving- data readily available
- Disadvantages
- Data may be outdated
- Units of analysis and measures may not be
appropriate. - Difficulties in combining multiple sec. Data
sources - Lack of information to verify the accuracy of
data.
18Uses of Secondary Data
- Fact finding
- Trends in the economy, markets etc.
- Exploratory analyses
- Building and testing analytical (mathematical,
econometric, forecasting etc.) models
19Types of Secondary Data
- Internal generated by the organisations
accounting systems - External, Proprietary commercial organisations
like IDC, Dow Jones, Standard and Poors etc.
routinely gather data which can be purchased. - Other external Government and other public
agencies
20Types of measurement scales
- Nominal data are measurements that simply
classify the units being measured ( of a sample
or the population) into categories. - Eg. Gender in census data, post code of
residential units, political party affiliation of
individuals, industrial classification code of
businesses.
21Types of measurement scales (contd.)
- Ordinal data are measures that enable the units
to be ordered (ranked) with respect to the
variable of interest no indication of how much. - Eg. A wine tasters ranking of 10 wines
- Ranking of candidates from a job interview
22Types of measurement scales (contd.)
- Interval Data Measurements that enable the
determination of how much (greater or lesser) the
characteristic being measured is possessed by the
unit than another - Interval scale subsumes ordinal scale but it also
tells us how far apart the units are with respect
to the characteristic (or attribute) of interest. - Always numerical but there is no knowledge of a
zero point (origin) on the measurement continuum.
23Interval Scale
- Examples
- -Measurement of temperatures (in celsius) at
which sample of 30 pieces of heat-resistant
plastic begins to melt. - - Scores of high school students in a
standardised test
24Ratio Scale
- Ratio scale data are data are measurements that
enable the determination of how many times the
attribute or characteristic being measured is
possessed by the unit - Eg. Sales revenues of 50 firms, bonus payments to
managers, unemployment rates for the past 60
months etc. - Always numerical and the zero point is defined.