Many of the commonly used methods for modeling and fitting
psychophysical data are special cases of statistical procedures of
great power and generality, notably the Generalized Linear Model
(GLM). This book illustrates how to fit data from a variety of
psychophysical paradigms using modern statistical methods and the
statistical language R.The paradigms include signal detection
theory, psychometric function fitting, classification images and
more. In two chapters, recently developed methods for scaling
appearance, maximum likelihood difference scaling and maximum
likelihood conjoint measurement are examined.The authors also
consider the applicationof mixed-effects models to psychophysical
data.
R is an open-source programming language that is widely used by
statisticians and is seeing enormous growth in its application to
data in all fields. It is interactive, containing many powerful
facilities for optimization, model evaluation, model selection, and
graphical display of data. The reader who fits data in R can
readily make use of these methods. The researcher who uses R to fit
and model his data has access to most recently developed
statistical methods.
This book does not assume that the reader is familiar with R,
and a little experience with any programming language is all that
is needed to appreciate this book. There are large numbers of
examples of R in the text and the source code for all examples is
available in an R package MPDiR available through R.
Kenneth Knoblauch is a researcher in the Department of Integrative
Neurosciences in Inserm Unit 846, The Stem Cell and Brain Research
Institute and associated with the University Claude Bernard, Lyon
1, in France.
Laurence T. Maloney is Professor of Psychology and Neural
Science at New York University. His research focusses on
applications of mathematical models to perception, motor control
and decision making."
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