Interpreting Probability Models: Logit

Probit and Other Generalized Linear Models

Printed Book
Sold as: EACH
SR 50 Per Month /4 months
Author: Liao, Tim Futing
Date of Publication: 1994
Book classification: Education, English Books,
No. of pages: 98 Pages
Format: Paperback

This book is printed on demand and is non-refundable after purchase

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    About this Product

    "The author provides a stepwise approach for evaluating the results of fitting probability models to data as the focus for the book . . . . All this is packaged very systematically . . . . the booklet is highly successful in showing how probability models can be interpreted."

    --Technometrics

    "Tim Futing Liao′s Interpreting Probability Models. . . is an advanced text . . . . Liao′s text is more theoretical, but is well exemplified using case studies . . . . this is a text for the more advanced statistician or the political scientist with strong leanings in this direction!"

    --John G. Taylor in Technology and Political Science

    What is the probability that something will occur, and how is that probability altered by a change in some independent variable? Aimed at answering these questions, Liao introduces a systematic way for interpreting a variety of probability models commonly used by social scientists. Since much of what social scientists study are measured in noncontinuous ways and thus cannot be analyzed using a classical regression model, it is necessary for scientists to model the likelihood (or probability) that an event will occur. This book explores these models by reviewing each probability model and by presenting a systematic way for interpreting results. Beginning with a review of the generalized linear model, the book covers binary logit and probit models, sequential logit and probit models, ordinal logit and probit models, multinomial logit models, conditional logit models, and Poisson regression models.


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