This book builds on John Fox′s previous volume in the QASS Series,
Non Parametric Simple Regression. In this monograph readers learn to
estimate and plot smooth functions when there are multiple independent
variables. While regression analysis traces the dependence of the
distribution of a response variable to see if it bears a particular
(linear) relationship to one or more of the predictors, nonparametric
regression analysis makes minimal assumptions about the form of
relationship between the average response and the predictors. This
makes nonparametric regression a more useful technique for analyzing
data in which there are several predictors that may combine additively
to influence the response. (An example could be something like birth
order/gender/and temperament on achievement motivation).
Unfortunately, researchers have not had accessible information on
nonparametric regression analysis, until now. Beginning with
presentation of nonparametric regression based on dividing the data
into bins and averaging the response values in each bin, Fox
introduces readers to the techniques of kernel estimation, additive
nonparametric regression, and the ways nonparametric regression can be
employed to select transformations of the data preceding a linear
least-squares fit. The book concludes with ways nonparametric
regression can be generalized to logit, probit, and Poisson
regression.
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Produktdetaljer
ISBN
9781544332604
Publisert
2018
Utgave
1. utgave
Utgiver
SAGE Publications, Inc. (US)
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter