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Research in Business

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Title: Research in Business


1
Research in Business
2
Why Study Research?
  • Research provides you with the knowledge and
    skills needed for the fast-paced decision-making
    environment

3
Why managers need Better Information
  • Global and domestic competitions is more vigorous
  • Organizations are increasingly practicing data
    mining and data warehousing

4
The Value of Acquiring Skills
  • To gather more information before selecting a
    course of action
  • To do a high-level research study
  • To understand research design
  • To evaluate and resolve a current management
    dilemma
  • To establish a career as a research specialist

5
Types of Studies Used to do Research
  • Reporting
  • Descriptive
  • Explanatory
  • Predictive

6
Different Styles of Research
  • Applied Research
  • Pure Research
  • Business Research

7
What is Good Research?
  • Following the standards of the scientific method
  • Purpose clearly defined
  • Research process detailed
  • Research design thoroughly planned
  • High ethical standards applied
  • Limitations frankly revealed

8
What is Good Research?
  • Following the standards of the scientific method
    (cont.)
  • Adequate analysis for decision-makers needs
  • Findings presented unambiguously
  • Conclusions justified
  • Researchers experience reflected

9
The Manager-Researcher Relationship
  • Managers Obligations
  • Specify problems
  • Provide adequate background information
  • Access to company information gatekeepers
  • Researchers Obligations
  • Develop a creative research design
  • Provide answers to important business questions

10
Manager- Researcher Conflicts
  • Managements limitations exposure to research
  • Manager sees researcher as threat to personal
    status
  • Researcher had to consider corporate culture and
    political situations
  • Researchers isolation from managers

11
Sources of Knowledge
  • Empiricists attempt to describe, explain, and
    make predictions through observation
  • Rationalists believe all knowledge can deduced
    from known laws or basic truths of nature
  • Authorities serve as important sources of
    knowledge, but should be judged on integrity and
    willingness to present a balanced case

12
Scientific Thinking
13
The Essential Tenets of Science
  • Direct observation of phenomena
  • Clearly defined variables, methods, and
    procedures
  • Empirically testable hypotheses
  • Ability to rule out rival hypotheses
  • Statistical justification of conclusions
  • Self-correcting process

14
Ways to Communicate
  • Exposition
  • Descriptive statements that merely state and so
    not give reason
  • Argument
  • Allows us to explain, interpret, defend,
    challenge, and explore meaning

15
Important Arguments in Research
  • Deduction is a form of inference that purports to
    conclusive
  • Induction draws conclusions form one or more
    particular facts

16
The Building Blocks of Theory
  • Concepts
  • Constructs
  • Definitions
  • Variables
  • Propositions and Hypotheses
  • Theories
  • Models

17
Understanding Concepts
  • A concept is a bundle of meanings or
    characteristics associated with certain events
  • Concepts have been developed over time through
    shared usage
  • The success of research hinges on
  • How clearly we conceptualize and
  • How well others understand the concepts we use

18
What is a Construct?
  • An image or idea specifically invented for a
    given research purpose

19
Types of Variables
  • Independent
  • Dependent
  • Moderating
  • Extraneous
  • Intervening

20
The Role of the Hypotheses
  • Guides the direction of study
  • Provides a framework for organizing the
    conclusions that result

21
What is a Good Hypotheses?
  • A good hypotheses should fulfill 3 conditions
  • Must be adequate for its purpose
  • Must be testable
  • Must be better than its rivals

22
The Value of a Theory
  • Narrows the range of facts we need to study
  • Summarizes what is know about an object of study
  • Used to predict further facts that should be
    found

23
The Research Process
24
The Management- Research Question Hierarchy
  • Measurement Questions
  • Investigative Questions
  • Research Questions
  • Management Questions
  • Management Dilemma
  • Level 5
  • Level 4
  • Level 3
  • Level 2
  • Level 1

25
Working with Hierarchy
  • Management Dilemma
  • The symptoms of an actual problem
  • Not difficult to identify a dilemma, however
    choosing one to focus on may be difficult

26
Working with the Hierarchy
  • Management Question Categories
  • Choice of purpose or objective
  • Generation and Evaluation of solutions
  • Troubleshooting or control situation

27
Working with the Hierarchy
  • Fine tune the research question
  • Examine concepts and constructs
  • Break research question into specific second and
    third level questions
  • Determine what evidence answers the various
    questions and hypothesis
  • Set the scope of your study

28
Working with the Hierarchy
  • Investigative Questions
  • Questions the researcher must answer to
    satisfactorily arrive at a conclusion about the
    research question

29
Working with the Hierarchy
  • Measurement Questions
  • The questions we actually ask or extract from
    respondents

30
Other Process in the Hierarchy
  • Exploration
  • Recent developments
  • Predictions by informed figures about the
    prospects of technology
  • Identification of those involved in the area
  • Accounts of successful ventures and failures by
    others in the field

31
Research Process Problems
  • The Favored Technique Syndrome
  • Company Database Strip-Mining
  • Unresearchable Question
  • Ill-Defined Management Problems
  • Politically Motivated Research

32
Designing the Study
  • Select a research design from the large variety
    of methods, techniques, procedures, protocols and
    sampling plans

33
Resource Allocation and Budget
  • Guides to plan a budget
  • Project planning
  • Data gathering
  • Analysis, interpretation, and reporting
  • Types of budgeting
  • Rule of thumb
  • Departmental or functional area
  • Task

34
Evaluation Methods
  • Ex Post Facto Evaluation
  • Prior Evaluation
  • Option Analysis
  • Decision Theory

35
Contents of a Research Proposal
  • A statement of the research question
  • A brief description of research methodology
  • Data collection
  • Data preparation
  • Data analysis and interpretation
  • Research reporting

36
Data Collection
  • Characterized by
  • Abstractness
  • Verifiability
  • Elusiveness
  • Closeness to the phenomenon
  • Secondary Data
  • Primary Data

37
Final Steps in Research
  • Data analysis
  • Reporting the results
  • Executive Summary
  • Overview of the research
  • Implementation strategies for the recommendations
  • Technical appendix

38
The Research Proposal
39
Purpose of the Research Proposal
  • To present the question to be researched and its
    importance
  • To discuss the research efforts of others who
    have worked on related questions
  • To suggest the data necessary for solving the
    question

40
The Research Sponsor
  • All research has a sponsor in one form or
    another
  • In a corporate setting, management
    sponsors research
  • In an academic environment, the student is
    responsible to the class instructor

41
What are the Benefits of the Proposal to a
Researcher?
  • Allows the researcher to plan and review the
    projects steps
  • Serves as a guide throughout the investigation
  • Forces time and budget estimates

42
Types of Research Proposals
  • Internal
  • External

43
Proposal Complexity
  • 3 Levels of Complexity
  • The Exploratory study is used for the most simple
    proposals
  • The Small-scale study is more complex and common
    in business
  • The Large-scale professional study is the most
    complex, costing millions of dollars

44
How to Structure the Research Proposal?
  • Create proposal modules
  • Put together various modules to tailor your
    proposal to the intended audience

45
Modules in a Research Proposal
  • Executive Summary
  • Problem statement
  • Research objectives
  • Literature Reviews
  • Importance of the Study
  • Research Design
  • Data Analysis
  • Nature and Form of Results
  • Qualifications of Researcher
  • Budget
  • Schedule
  • Facilities and Special Resources
  • Project Management
  • Bibliography
  • Appendixes

46
What to include in the Appendixes?
  • A glossary of concepts, constructs, and
    definitions
  • Samples of the measurement instrument
  • Other materials that reinforce the body of the
    proposal

47
Evaluating the Research Proposal
  • Proposal must be neatly written
  • Major topic should be easily found and logically
    organized
  • Proposal must meet specific guidelines set by the
    sponsor
  • Technical writing style must be clearly
    understood and explained

48
Ethics in Business Research
49
What are Research Ethics?
  • Ethics are norms or standards of behavior that
    guide moral choices about our behavior and our
    relationships with others
  • The goal is to ensure that no one is harmed or
    suffers adverse consequences from research
    activities

50
Ethical Treatment of Respondents and Subjects
  • Begin data collection by explaining to the
    respondent the benefits expected from the
    research
  • Explain to the respondent that their rights and
    well-being will be adequately protected, and say
    how this will be done
  • Be certain that interviews obtain the informed
    consent of the respondent

51
Deception
  • The respondent is told only part of the truth
    when the truth is fully compromised
  • To prevent biasing the respondents before the
    survey or experiment
  • To protect the confidentiality of a third party

52
Issues Related to Protecting Respondents
  • Informed consent
  • Debriefing
  • Confidentiality
  • Right to Privacy

53
Ethical Issues Related to the Client
  • Sponsor nondisclosure
  • Purpose nondisclosure
  • Findings nondisclosure
  • Right to quality research

54
Ethical Issues Related to Researchers and Team
Members
  • Safety
  • Ethical behavior of assistants
  • Protection of anonymity

55
Design Strategies
56
What is Research Design?
  • A plan for selecting the sources and types of
    information used to answer research questions
  • A frame work for specifying the relationships
    among the study variables
  • A blueprint that outlines each procedure from the
    hypothesis to the analysis

57
Classifications of Designs
  • Exploratory study is usually to develop
    hypotheses or questions for further research
  • Formal study is to test the hypotheses or answer
    the research question posed

58
Methods of Data Collection
  • Monitoring, which includes observational studies
  • Interrogation/ Communication mode

59
The Power of a Researcher
  • In an experiment, the researcher attempts to
    control and/or manipulate the variables in the
    study
  • In an ex post facto design, the researcher has
    no control over the variables, they can only
    report what has happened

60
What type of Study to use?
  • Descriptive is how one variable produces changes
    in another
  • Causal tries to explain relationships among
    variables

61
The Time Dimension
  • Cross-sectional studies are carried out once and
    the represent a snapshot of one point and time
  • Longitudinal studies are repeated over an
    extended period

62
The Topical Scope
  • Statistical studies attempt to capture a
    populations characteristics by making
    inferences form a samples characteristics
  • Case studies place more emphasis on a full
    contextual analysis of fewer events or conditions
    and their interrelations

63
The Research Environment
  • Field Conditions
  • Laboratory Conditions
  • Simulations

64
A Subjects Perceptions
  • Usefulness of a design may be reduced when people
    in the study perceive that research is being
    conducted
  • Subjects perceptions influence the outcomes of
    the research

65
Why do Exploratory Studies?
  • Exploration is particularly useful when
    researchers lack a clear idea of the problems

66
Data Collection Techniques
  • Qualitative Techniques
  • Secondary Data
  • Focus Groups
  • Two-stage Design

67
The Concept of a Causal Study
  • The essential element of causation is that A
    produces B or A forces B to occur

68
Relationships that Occur with a Causal Study
  • Symmetrical
  • Reciprocal
  • Asymmetrical

69
Types of Asymmetrical Relationships
  • Stimulus-Response
  • Property-Disposition
  • Disposition-Behavior
  • Property-Behavior

70
Achieving the Ideal Experimental Design
  • Random Assignment
  • Matching
  • Manipulation and control of variables

71
Measurement
72
Measurement
  • Selecting observable empirical events
  • Using numbers or symbols to represent aspects of
    the events
  • Applying a mapping rule to connect the
    observation to the symbol

73
What is Measured?
  • Objects-things of ordinary experience and that
    are not that concrete
  • Properties-characteristics of objects

74
Characteristics of Data
  • Order
  • Interval between numbers
  • Origin of number series

75
Data Types
  • Order Interval
    Origin
  • Nominal none - none - none
  • Ordinal yes - unequal - none
  • Interval yes - equal or unequal -none
  • Ratio yes - equal -
    zero

76
Sources of Measurement Differences
  • Respondent
  • Situational factors
  • Measurer or researcher
  • Instrument

77
Validity
  • Content Validity
  • Criterion-Related Validity
  • Concurrent
  • Predictive
  • Construct Validity

78
Reliability
  • Stability
  • Test-retest
  • Equivalence
  • Parallel forms
  • Internal Consistency
  • Split-half
  • KR20
  • Cronbachs alpha

79
Practicality
  • Economy
  • Convenience
  • Interpretability

80
Chapter 8Scaling Design
81
What is Scaling?
  • Assigning numbers to indicants of the properties
    of objects

82
Types of Response Scales
  • Rating Scales
  • Ranking Scales

83
Types of Rating Scales
  • Simple category
  • Multiple choice, multiple response
  • Likert scale
  • Semantic differential
  • Numerical
  • Multiple fixed rating
  • Fixed sum
  • Stapel
  • Graphic rating

84
Rating Scales Problems to Avoid
  • Leniency
  • Negative Leniency
  • Central Tendency
  • Halo Effect

85
Types of Ranking Scales
  • Paired-comparison
  • Forced Ranking
  • Comparative

86
Dimensions of a Scale
  • Unidimensional
  • Multidimensional

87
Scale Design Techniques
  • Arbitrary
  • Consensus
  • Item Analysis
  • Cumulative
  • Factor

88
Sampling Design
89
Selection of Elements
  • Sampling
  • Population Element
  • Population
  • Census

90
What is a Good Sample?
  • Accurate
  • Precision of estimate

91
Types of Sampling Designs
  • Probability
  • Nonprobability

92
Steps in Sampling Design
  • What is the relevant population?
  • What are the parameters of interest?
  • What is the sampling frame?
  • What is the type of sample?
  • What size sample is needed?
  • How much will it cost?

93
Concepts to help understand Probability Sampling
  • Standard error of the mean
  • Confidence interval
  • Central limit theorem

94
Probability Sampling Designs
  • Simple Random
  • Systemic
  • Stratified
  • Proportionate
  • Cluster
  • Double

95
Designing Cluster Samples
  • How homogeneous are the clusters?
  • Shall we seek equal or unequal clusters?
  • How large a cluster shall we take?
  • Shall we use a single-stage or multistage
    cluster?
  • How large a sample is needed?

96
Nonprobability Sampling
  • Reasons to use Nonprobability Sampling instead of
    Probability Sampling
  • The nonprobability procedure satisfactorily meets
    the sampling objectives
  • Lower cost
  • Limited Time
  • Not as much human error as selecting a completely
    random sample
  • Total list population not available

97
Nonprobability Sampling Designs
  • Convenience Sampling
  • Purposive Sampling
  • Judgement Sampling
  • Quota Sampling
  • Snowball Sampling

98
Secondary Data Sources
99
Information is Classifies by Two Sources
  • Primary Data
  • Secondary Data

100
Uses of Secondary Data
  • Provides specific reference or citation on some
    point
  • Helps decide what further research needs to be
    done
  • Justifies bypassing the costs and benefits of
    doing primary research
  • May be used as the sole basis for a research study

101
Classifying Secondary Data
  • By Source
  • By Category
  • By Medium
  • By Database format

102
Classifying Secondary Data by Source
  • Internal
  • External

103
Classifying Secondary Data by Category
  • Database
  • Periodicals
  • Government Documents
  • Special Collections

104
Classifying Secondary Databy Medium
  • Hard copy
  • Local-area on-line
  • Internet

105
The Librarys Role in Research
  • Resources may be acquired through interlibrary
    loans (ILL)
  • Certain Databases are available on a local-area
    network (LAN)
  • Access to the internet an commercial CD/ DVD-ROM

106
Strategy for Searching for Secondary Data
  • Select and analyze a topic
  • Explore the topic and state a hypothesis
  • Get an overview and retrospective information
  • Get more current and specific information
  • Get more in-depth information
  • Evaluate and close the library research

107
Using Search Engines and Indexes
  • The search engine consists of two elements
  • Robot/Crawler
  • Indexer

108
How to Keep Track of Research?
  • Be selective in what you record
  • Decide how to record what you will extract from
    the published material
  • Develop an orderly recording system

109
Survey Methods Communicating with Respondents
110
Communication Approach Impacts the Research
Process
  • Creation and selection of measurement questions
  • Sampling issues, drive contact and callback
    procedures
  • Instrument design, which incorporates attempts to
    reduce error and create respondent-screening
    procedures
  • Data collection procedures and possible
    interviewer training

111
Personal Interview
  • Requirements for success
  • Availability of the needed information from the
    respondent
  • An understanding by the respondent of his or her
    role
  • Adequate motivation by the respondent to cooperate

112
Personal Interview
  • To Increase Respondents Receptiveness they must
  • believe the experience will be pleasant and
    satisfying
  • think answering the survey is an important and
    worthwhile use of their time
  • have any mental reservations satisfied

113
The Interview
  • Introduction
  • Establish a good relationship
  • Gather the data
  • Probing
  • Record the Interview

114
Probing Styles
  • A brief assertion of understanding and interest
  • An expectant pause
  • Repeating the question
  • Repeating the respondents reply
  • A neutral question or comment
  • Question clarification

115
Interview Problems
  • Non-response error
  • Response error
  • Interviewer error
  • Cost

116
Telephone Interview
  • Types
  • Computer-assisted telephone interviewing
  • Computer-administered telephone survey
  • Problems
  • Non-contact rate
  • Refusal rate

117
Self-Administered
  • Types
  • Intercept study
  • Mail survey
  • Disadvantages
  • Large non-response error
  • Cannot obtain detailed or large amounts of
    information

118
Concurrent Techniques to Improve Mail Response
  • Reduce Length
  • Survey Sponsorship
  • Return Envelopes
  • Postage
  • Personalization
  • Anonymity
  • Size, color, and reproduction
  • Money Incentives
  • Deadline Dates
  • Cover Letters

119
Outsourcing Survey Services
  • Research Firms Provide
  • Centralized-location interviewing
  • Focus group facilities
  • Trained staff with experience
  • Data-processing and statistical analysis
    capabilities
  • Access to point of scale data
  • Panels

120
Instruments For Respondent Communication
121
3 Phases of the Instrument Design Process
  • Developing the instrument design process
  • Constructing and refining the measurement
    questions
  • Drafting and refining the instrument

122
Developing the Instrument Design Strategy
  • You must go through four question levels
  • The management question
  • Research question
  • Investigative questions
  • Measurement questions

123
Strategic Concerns of Instrument Design
  • What type of data is needed to answer the
    management question
  • What communication approach will be used
  • Should the question be structured, unstructured,
    or some combination
  • Should the question be disguised or undisguised

124
Ways to Interact with the Respondent
  • Personal Interview
  • Telephone
  • Mail
  • Computer

125
What are the Three Types of Measurement Questions?
  • Target
  • Classification
  • Administrative

126
4 Questions for Selecting Appropriate Question
Content
  • Should this question be asked?
  • Is the question of proper scope and coverage?
  • Can the respondent adequately answer this
    question, as asked?
  • Will the respondent willingly answer this
    question, as asked?

127
How to test a Respondents Knowledge
  • Filter Questions
  • Screen Questions

128
Question Wording Criteria
  • Is the question stated in terms of a shared
    vocabulary?
  • Does the question contain vocabulary with a
    single meaning?
  • Does the question contain unsupported
    assumptions?
  • Is the question correctly personalized?
  • Are adequate alternatives presented within the
    question?

129
What Dictates Your Response Strategy?
  • Characteristics of respondents
  • Nature of the topic being studied
  • Type of data needed
  • Your analysis plan

130
Types of Response Questions
  • Free-response
  • Dichotomous
  • Multiple choice
  • Rating
  • Ranking

131
Guidelines to Refining the Instrument
  • Awaken the respondents interests
  • Use buffer questions as a guide to request
    sensitive information
  • Use the funnel approach to move to more specific
    questions

132
Final Step Toward Improving Survey Results
  • Pre-testing is an established practice for
    discovering errors and useful for training the
    research team

133
Observational Studies
134
Observation
  • Non-behavioral observation
  • Record analysis
  • Physical condition analysis
  • Physical process analysis
  • Behavioral observation
  • nonverbal analysis
  • Linguistic analysis
  • Extra-linguistic analysis
  • Spatial analysis

135
Advantages of the Observational Method
  • Only method available to collect certain types of
    data
  • Collect the original data at the time it occurs
  • Secure information that participants would ignore
    because its so common it is not seen as relevant

136
Advantages of the Observational Method (cont..)
  • Capture the whole event as it occurs in its
    natural environment
  • Subjects seem to accept an observational
    intrusion better than they respond to questioning

137
Limitations of the Observational Method
  • Observer or recording equipment must be at the
    scene of the event when it takes place
  • Slow process
  • Expensive process
  • Most reliable results are restricted to
    information that can be learned by overt action
    or surface indicators

138
Limitations of the Observational Method (cont..)
  • Research environment is more likely suited to
    subjective assessment and recording of data than
    to quantification of events
  • Limited as a way to learn about the past
  • Cannot observe rationale for actions, only
    actions themselves

139
Relationship between observer and subject
  • Direct or indirect observation
  • Observers presence known or unknown to the
    subject
  • Observers involvement level with the respondent

140
Observation
  • Direct
  • Indirect
  • Participant
  • Simple
  • Systematic

141
Guidelines for selecting observers
  • Ability to concentrate in a setting full of
    distractions
  • Ability to remember details of an experience
  • Ability to be unobtrusive in the observational
    situation

142
Data collection
  • Who?
  • What?
  • Event Sampling
  • Time Sampling
  • When?
  • How?

143
Experimentation
144
Types of variables in Experiments
  • Independent Variables
  • Dependent Variables

145
What are the Advantages of an Experiment?
  • Researchers ability to manipulate the
    independent variable
  • Contamination from extraneous variables can be
    controlled more efficiently
  • Convenience and cost
  • Replication

146
What are the Disadvantages?
  • Artificiality of the laboratory
  • Generalization from non-probability samples
  • Larger budgets needed
  • Restricted to problems of the present or
    immediate future
  • Ethical limits to manipulation of people

147
How to Conduct an Experiment?
  • Select relevant variables
  • Specify the treatment levels
  • Control the experimental environment
  • Choose the experimental design
  • Select and assign the subjects
  • Pilot-test, revise, and test
  • Analyze the data

148
Ways to Assign Subjects?
  • Random Assignment
  • Matching Assignment
  • Quota Matrix

149
Does a Measure Accomplish What it Claims?
  • Internal validity
  • External validity

150
Variations in Experimental Designs
  • Pre-experimental designs
  • True experimental designs
  • Field experiments

151
Types of Pre-experimental Designs?
  • One-shot case study
  • One-group pretest-posttest design
  • Static group comparison

152
Types of True Experimental Designs
  • Pretest-posttest control group design
  • Posttest only control group design

153
Operational Extensions of True Designs
  • Completely randomized designs
  • Randomized block design
  • Latin square
  • Factorial design
  • Covariance analysis

154
What are Field ExperimentsQuasi or Semi?
  • Non equivalent control group design
  • Separate sample pretest-posttest design
  • Group time series design

155
Data preparation and Preliminary Analysis
156
Editing
  • Detects errors and omissions, corrects them when
    possible, and certifies that minimum data quality
    standards are achieved

157
Editing (cont..)
  • Guarantees that data are
  • accurate
  • consistent with other information
  • uniformly entered
  • complete
  • arranged to simplify coding and tabulation

158
Coding
  • Rules that guide the establishment of category
    sets
  • Appropriate to the research problem and purpose
  • Exhaustive
  • Mutually exclusive
  • Derived from one classification principal

159
Content Analysis
  • Follows a systematic process with the selection
    of a unitization scheme
  • Syntactical unit
  • Referential unit
  • Propositional unit
  • Thematic unit

160
Data Entry Options
  • Optical Scanning
  • Spreadsheets
  • Data warehouse
  • Transformation and cleaning
  • End-user access tools
  • Data marts

161
Descriptive Statistics
  • Distribution
  • Standard normal distribution
  • Central tendency
  • Mean
  • Median
  • Mode
  • Variability
  • Variance
  • Standard deviation
  • Range
  • Interquartile range
  • Skewness
  • Kurtosis

162
Techniques to Display and Examine Distributions
  • Frequency table
  • Histograms
  • Display all intervals in a distribution, even
    without observed values
  • Examine the shape of the distribution for
    Skewness, kurtosis, and the modal pattern
  • Stem and leaf display

163
Techniques (cont.)
  • Box and whisker-plot
  • Rectangular plot tat encompasses 50 of the data
    values
  • A center line marking the median and going go
    through the width of the box
  • The edges of the box (hinges)
  • Whiskers that extend from the right and left
    hinges to the largest and smallest values

164
Techniques (cont.)
  • Transformation
  • To improve interpretation and compatibility with
    other data sets
  • To enhance symmetry and stabilize spread
  • To improve linear relationships between and among
    variables

165
Data Mining Techniques
  • Data visualization
  • Dimensions
  • Measurements
  • Hierarchies
  • Clustering
  • Neural networks
  • Tree Models
  • Classification

166
Data Mining Techniques (cont.)
  • Market-Basket Analysis
  • Sequence Based Analysis
  • Fuzzy Logic
  • Genetic Algorithms
  • Fractal-base Transformation

167
Data Mining Process
  • Sample
  • Explore
  • Modify
  • Model
  • Assess

168
Hypothesis Testing
169
Two Approaches to Hypothesis Testing
  • Classical Statistics
  • Bayesian Statistics

170
Types of Hypotheses
  • Null
  • Alternative

171
The Logic of HypothesisTesting
  • Two tailed test
  • One tailed test

172
Decision Errors in Testing
  • Type I error
  • Type II error

173
Testing for Statistical Significance
  • State the null hypothesis
  • Choose the statistical test
  • Select the desired level of significance
  • Compute the calculated difference value
  • Obtain the critical value
  • Make the decision

174
What are Significant Tests?
  • Parametric tests
  • Non-parametric tests

175
How to Test the Null Hypothesis
  • Analysis of variance (ANOVA)

176
How to select a test
  • Does the test involve one sample, two samples, or
    k samples?
  • If two samples or k samples are involved, are the
    individual cases independent or related?
  • Is the measurement scale nominal, ordinal,
    interval, or ratio?

177
When to use the K Related Sample Tests
  • The grouping factor has more than two levels
  • Observations or subjects are matched or the same
    subject is measured more than once
  • The data are at least interval

178
Measures of Association
179
Bivariate Correlation vs.. Non-parametric
Measures of Association
  • Parametric correlation requires two continuous
    variables measured on an interval or ratio scale
  • The coefficient does not distinguish between
    independent and dependent variables

180
Bivariate Correlation Analysis
  • Pearson correlation coefficient
  • r symbolized the coefficients estimate of linear
    association based on sampling data
  • Correlation Coefficients reveal the magnitude and
    direction of relationships
  • Coefficients sign ( or -) signifies the
    direction of the relationship
  • Assumptions of r
  • Linearity
  • Bivariate normal distribution

181
Bivariate Correlation Analysis
  • Scatterplots
  • Provide a means for visual inspection of data
  • Both direction and shape of a relationship are
    conveyed

182
Interpretation of Coefficients
  • Coefficient of determination
  • Correlation matrix
  • used to display coefficients for more than two
    variables
  • Correlation coefficient does not imply causation

183
Interpretation of Coefficients
  • Suggests alternate explanations for correlation
    results
  • X causes Y, or Y causes X, or XY are activated
    by one or more other variables, or XY influence
    each other reciprocally
  • Practical Significance
  • Statistical Significance
  • Artifact correlations

184
Bivariate Linear Regression
  • Used to make simple and multiple predictions
  • Regression coefficients
  • Slope
  • Intercept
  • Error term
  • Method of least squares

185
Interpreting Linear Regression
  • Residuals
  • Prediction and confidence bands

186
Interpreting Linear Regression
  • Goodness of fit
  • Zero slopes come from
  • Y completely unrelated to X and no systematic
    pattern is evident
  • Constant values of Y for every value of X
  • data are related, but represented by a nonlinear
    function
  • Tests
  • t test
  • F test
  • Coefficient of Determination

187
Non-parametric Measures of Association
  • Measures for nominal data
  • When there is no relationship at all, coefficient
    should be 0
  • When there is a complete dependency, the
    coefficient should display unity or 1

188
Non-parametric Measures of Association
  • Chi-square based measure
  • Phi
  • Cramers V
  • Contingency coefficient of C
  • Proportional reduction in error (PRE)
  • Lambda
  • Tau

189
Characteristics of Ordinal Data
  • Concordant- subject ranks higher on one variable
    also ranks higher on the other variable
  • Discordant- subject ranks higher on one variable
    is ranked lower on the other variable

190
Measures for Ordinal Data
  • Gamma
  • Somers d
  • Spearmans rho
  • Kendalls tau b
  • Kendalls tau c
  • No assumption of bivariate normal distribution
  • Values range from 1.0 to -1.0

191
Multivariate AnalysisAn Overview
192
Selecting a Multivariate Technique
  • Dependency
  • Interdependency

193
What are Dependency Techniques?
  • Multiple regression
  • Discriminant analysis
  • Multivariate analysis if variance, or MANOVA
  • Linear structural relationships, or LISREL
  • Conjoint analysis

194
What are Interdependency Techniques?
  • Factor analysis
  • Cluster analysis
  • Multidimensional scaling (MDS)

195
Use Multiple Regression as a Descriptive Tool
  • Predict values for a criterion variable by
    developing a self-weighting estimating equation
  • Control for confounding variables to better
    evaluate the contribution other variables
  • Test and explain causal theories

196
Uses for Discriminant Analysis
  • Classify persons or objects into various groups
  • Analyze known groups to determine the relative
    influence of specific factors

197
Why Use MANOVA?
  • In business research, MANOVA can be used to test
    differences among samples of employees,
    customers, manufactured items, and production
    parts.

198
The Two Models of LISREL
  • Measurement
  • Structural equation

199
Applications for Conjoint Analysis
  • Market Research
  • Product development

200
What is Factor Analysis?
  • Computational techniques that reduce variables to
    a manageable number
  • Measurement statistics

201
Five Basic Steps to the Application of Cluster
Studies
  • Selection of the sample to be clustered
  • Definition of the variables on which to measure
    the objects, events, or people
  • computation of similarities among the entities
    through correlation, Euclidean distances, and
    other techniques
  • Selection of mutually exclusive clusters
  • Cluster comparison and validation

202
What does Multidimensional Scaling Do?
  • Creates a special description of a respondents
    perception about a product, service, or other
    object of interest

203
Written and Oral Reports
204
Written Research Report
  • Short report
  • Tell the reader why you are writing
  • If in response, remind reader the exact point,
    answer it, and follow with details
  • Write in expository style with brevity and
    directness
  • Write report today and leave it for tomorrow to
    review before sending it
  • Attach detailed material as appendices when needed

205
Written Research Report
  • Long report
  • Technical report
  • Management report

206
Research Report Components
  • Methodology
  • Sampling design
  • Research design
  • Data collection
  • Data analysis
  • Limitations
  • Conclusions
  • Summary and conclusions
  • Recommendations
  • Appendices
  • Bibliography
  • Prefatory Items
  • Letter of transmittal
  • Title page
  • Authorization letter
  • Executive summary
  • Table of contents
  • Introduction
  • Problem Statement
  • Research objectives
  • Background

207
Written Report Considerations
  • Order
  • Sentence outline
  • Topic outline
  • Readability indices
  • Pace
  • Tone

208
Presentation of Statistics
  • Text paragraph
  • Semi-tabular form
  • Tables
  • Graphics

209
Graphics
  • Line graphs
  • Area charts
  • Pie charts
  • Bar charts
  • Pictograph
  • 3-D graphics
  • Control charts
  • Outliners- observations that fall outside the
    control lines
  • Runs- data points in a series above or below the
    central line
  • Pareto diagram

210
Oral Presentations
  • Preparation
  • Length
  • Content
  • Opening
  • Findings and conclusions
  • Recommendations
  • Outline
  • Delivery
  • Vocal Characteristics
  • Physical Characteristics

211
Audiovisuals
  • Chalkboard and whiteboards
  • Handout material
  • Flip charts
  • Overhead transparencies
  • Slides
  • Computer drawn visuals
  • Computer animation
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