1 / 12

Multivariate Data Analysis Chapter 10 - Multidimensional Scaling

Multivariate Data Analysis Chapter 10 - Multidimensional Scaling. MIS 6093 Statistical Method Instructor: Dr. Ahmad Syamil. Chapter 10. What Is Multidimensional Scaling? A Simplified Look at How Multidimensional Scaling Works Comparing MDS to Other Interdependence Techniques

lok
Download Presentation

Multivariate Data Analysis Chapter 10 - Multidimensional Scaling

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Multivariate Data AnalysisChapter 10 - Multidimensional Scaling MIS 6093 Statistical Method Instructor: Dr. Ahmad Syamil

  2. Chapter 10 • What Is Multidimensional Scaling? • A Simplified Look at How Multidimensional Scaling Works • Comparing MDS to Other Interdependence Techniques • Individual As the Unit of Analysis • Lack of a Variate

  3. Chapter 10A Decision Framework for Perceptual Mapping • Stage 1: Objectives of Multidimensional Scaling • Key Decisions in Setting Objectives • Identification of All Relevant Objects to Be Evaluated • Similarities Versus Preference Data • Aggregate Versus Disaggregate Analysis

  4. Chapter 10A Decision Framework for Perceptual Mapping Cont. • Stage 2: Research Design of Multidimensional Scaling • Selection of Either a Decompositional (Attribute-free) or Compositional (Attribute-based) Approach • Decompositional or Attribute-free Approach • Compositional or Attribute-based Approach • Selecting Between Compositional and Decompositional Techniques • Objects: Their Number and Selection • Nonmetric Versus Metric Methods • Collection of Similarity or Preference Data • Similarities Data • Comparison of Paired Objects • Confusion Data • Derived Measures • Collecting Preference Data • Direct Ranking • Paired Comparisons • Preference Data Versus Similarity Data

  5. Chapter 10A Decision Framework for Perceptual Mapping Cont. • Stage 3: Assumptions of Multidimensional Scaling Analysis • Stage 4: Deriving the MDS Solution and Assessing Overall Fit • Determining an Object's Position in the Perceptual Map • Selecting the Dimensionality of the Perceptual Map • Incorporating Preferences into Multidimensional Scaling • Ideal Points • Positioning the Ideal Point • Internal Analysis • External Analysis • Vector Versus Point Representations • Summary

  6. Chapter 10A Decision Framework for Perceptual Mapping Cont. • Stage 5: Interpreting the MDS Results • Identifying the Dimensions • Subjective Procedures • Objective Procedures • Selecting Between Subjective and Objective Procedures • Stage 6: Validating the MDS Results

  7. Chapter 10Correspondence Analysis • A Simple Example of Correspondence Analysis • Calculating A Measure of Association • Creating the Perceptual Map • Stage 1: Objectives of Correspondence Analysis • Stage 2: Research Design of Correspondence Analysis • Stage 3: Assumptions in Correspondence Analysis

  8. Chapter 10Correspondence Analysis Cont. • Stage 4: Deriving the Correspondence Analysis Results and Assessing Overall Fit • Stage 5: Interpretation of Results • Stage 6: Validation of the Results • Overview of Correspondence Analysis

  9. Chapter 10Illustration of Multidimensional Scaling and Correspondence Analysis • Stage 1: Objectives of Perceptual Mapping • Stage 2: Research Design of the Perceptual Mapping Study • Similarity Data • Attribute Ratings • Preference Evaluations • Stage 3: Assumptions in Perceptual Mapping

  10. Chapter 10Illustration of Multidimensional Scaling and Correspondence Analysis Cont. • Multidimensional Scaling: Stages 4 and 5 • Stage 4: Deriving the Multidimensional Scaling Results and Assessing Overall Fit • Incorporating Preferences in the Perceptual Map • Stage 5: Interpretation of the Results • Overview of the Decompositional Results

  11. Chapter 10Illustration of Multidimensional Scaling and Correspondence Analysis Cont. • Correspondence Analysis: Stages 4 and 5 • Stage 4: Deriving the Correspondence Analysis • Stage 5: Interpreting the Correspondence Analysis Results • An Overview of Correspondence Analysis • Stage 6: Validation of the Results • A Managerial Overview of the Multidimensional Scaling Results

  12. Chapter 10 • Summary • Questions • References ……end

More Related