This book reconsiders statistical methods from the point of view of
entropy, and introduces entropy-based approaches for data analysis.
Further, it interprets basic statistical methods, such as the chi-square
statistic, t-statistic, F-statistic and the maximum likelihood
estimation in the context of entropy. In terms of categorical data
analysis, the book discusses the entropy correlation coefficient (ECC)
and the entropy coefficient of determination (ECD) for measuring
association and/or predictive powers in association models, and
generalized linear models (GLMs). Through association and GLM
frameworks, it also describes ECC and ECD in correlation and regression
analyses for continuous random variables. In multivariate statistical
analysis, canonical correlation analysis, T2-statistic, and
discriminant analysis are discussed in terms of entropy. Moreover, the
book explores the efficiency of test procedures in statistical tests of
hypotheses using entropy. Lastly, it presents an entropy-based path
analysis for structural GLMs, which is applied in factor analysis and
latent structure models. Entropy is an important concept for dealing
with the uncertainty of systems of random variables and can be applied
in statistical methodologies. This book motivates readers, especially
young researchers, to address the challenge of new approaches to
statistical data analysis and behavior-metric studies.