Nonparametric Statistical Inference with an Emphasis on Information-Theoretic Methods

This book addresses contemporary statistical inference issues when no or minimal assumptions on the nature of studied phenomenon are imposed. Information theory methods play an important role in such scenarios. The approaches discussed include various high-dimensional regression problems, time serie...

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Year of Publication:2022
Language:English
Physical Description:1 electronic resource (226 p.)
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653 |a loss function 
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653 |a tail dependency 
653 |a multivariate analysis 
653 |a conditional mutual information 
653 |a CMI 
653 |a information measures 
653 |a nonparametric variable selection criteria 
653 |a gaussian mixture 
653 |a conditional infomax feature extraction 
653 |a CIFE 
653 |a joint mutual information criterion 
653 |a JMI 
653 |a generative tree model 
653 |a Markov blanket 
653 |a minimum distance estimation 
653 |a maximum likelihood estimation 
653 |a influence functions 
653 |a adaptive splines 
653 |a B-splines 
653 |a right-censored data 
653 |a semiparametric regression 
653 |a synthetic data transformation 
653 |a time series 
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