Book Image

Data Analysis with IBM SPSS Statistics

By : Ken Stehlik-Barry, Anthony Babinec
Book Image

Data Analysis with IBM SPSS Statistics

By: Ken Stehlik-Barry, Anthony Babinec

Overview of this book

SPSS Statistics is a software package used for logical batched and non-batched statistical analysis. Analytical tools such as SPSS can readily provide even a novice user with an overwhelming amount of information and a broad range of options for analyzing patterns in the data. The journey starts with installing and configuring SPSS Statistics for first use and exploring the data to understand its potential (as well as its limitations). Use the right statistical analysis technique such as regression, classification and more, and analyze your data in the best possible manner. Work with graphs and charts to visualize your findings. With this information in hand, the discovery of patterns within the data can be undertaken. Finally, the high level objective of developing predictive models that can be applied to other situations will be addressed. By the end of this book, you will have a firm understanding of the various statistical analysis techniques offered by SPSS Statistics, and be able to master its use for data analysis with ease.
Table of Contents (17 chapters)
4
Dealing with Missing Data and Outliers
10
Crosstabulation Patterns for Categorical Data

Summary

SPSS Statistics offers three procedures for cluster analysis.

The CLUSTER procedure performs hierarchical clustering. Hierarchical clustering starts with the casewise proximities matrix and combines cases and clusters into clusters using one of the seven clustering methods. Schedule, Dendogram, and icicle plots are aids to identifying the tentative number of clusters. Consider using CLUSTER when you are unsure of the number of clusters at the start and are willing to compute the proximity matrix.

The QUICK CLUSTER procedure performs K-means clustering, which requires specification of an explicit tentative number of clusters. K-means clustering avoids forming the proximities matrix along with all the steps of agglomeration, and so it can be used on files with lots of cases. K-means clustering is not invariant to scaling, and furthermore, can impose a spherical structure...