Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical Modeling

Bivariate statistical modeling from incomplete data is a useful statistical tool that allows to discover the model underlying two data sets when the data in the two sets do not correspond in size nor in ordering. Such situation may occur when the sizes of the two data sets do not m...

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Main Author: Simone Fiori
Format: Article
Language:English
Published: Hindawi Limited 2007-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2007/71859
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spelling doaj-dff2ac9ae76549bc81f284ee4ffa28b82020-11-24T21:06:36ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52651687-52732007-01-01200710.1155/2007/7185971859Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical ModelingSimone Fiori0Dipartimento di Elettronica, Intelligenza Artificiale e Telecomunicazioni, Università Politecnica delle Marche, Via Brecce Bianche, Ancona 60131, ItalyBivariate statistical modeling from incomplete data is a useful statistical tool that allows to discover the model underlying two data sets when the data in the two sets do not correspond in size nor in ordering. Such situation may occur when the sizes of the two data sets do not match (i.e., there are holes in the data) or when the data sets have been acquired independently. Also, statistical modeling is useful when the amount of available data is enough to show relevant statistical features of the phenomenon underlying the data. We propose to tackle the problem of statistical modeling via a neural (nonlinear) system that is able to match its input-output statistic to the statistic of the available data sets. A key point of the new implementation proposed here is that it is based on look-up-table (LUT) neural systems, which guarantee a computationally advantageous way of implementing neural systems. A number of numerical experiments, performed on both synthetic and real-world data sets, illustrate the features of the proposed modeling procedure.http://dx.doi.org/10.1155/2007/71859
collection DOAJ
language English
format Article
sources DOAJ
author Simone Fiori
spellingShingle Simone Fiori
Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical Modeling
Computational Intelligence and Neuroscience
author_facet Simone Fiori
author_sort Simone Fiori
title Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical Modeling
title_short Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical Modeling
title_full Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical Modeling
title_fullStr Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical Modeling
title_full_unstemmed Neural Systems with Numerically Matched Input-Output Statistic: Isotonic Bivariate Statistical Modeling
title_sort neural systems with numerically matched input-output statistic: isotonic bivariate statistical modeling
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5265
1687-5273
publishDate 2007-01-01
description Bivariate statistical modeling from incomplete data is a useful statistical tool that allows to discover the model underlying two data sets when the data in the two sets do not correspond in size nor in ordering. Such situation may occur when the sizes of the two data sets do not match (i.e., there are holes in the data) or when the data sets have been acquired independently. Also, statistical modeling is useful when the amount of available data is enough to show relevant statistical features of the phenomenon underlying the data. We propose to tackle the problem of statistical modeling via a neural (nonlinear) system that is able to match its input-output statistic to the statistic of the available data sets. A key point of the new implementation proposed here is that it is based on look-up-table (LUT) neural systems, which guarantee a computationally advantageous way of implementing neural systems. A number of numerical experiments, performed on both synthetic and real-world data sets, illustrate the features of the proposed modeling procedure.
url http://dx.doi.org/10.1155/2007/71859
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