http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdf

Information extraction from high-dimensional data represents an important problem in current applications in management or econometrics. An important problem from a practical point of view is the sensitivity of machine learning methods with respect to the presence of outlying data values, while n...

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Main Author: Jan Kalina
Format: Article
Language:English
Published: University in Belgrade 2014-05-01
Series:Serbian Journal of Management
Subjects:
Online Access:http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_131-144.pdf
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spelling doaj-798de97128b3495f900bdf8f113ce4b72020-11-24T23:39:02ZengUniversity in BelgradeSerbian Journal of Management1452-48642217-71592014-05-019113114410.5937/sjm9-5520http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdfJan Kalina0Institute of Computer Science of the Academy of Sciences of the Czech Republic, Pod Vodárenskou věží 2, 182 07 Praha 8, Czech RepublicInformation extraction from high-dimensional data represents an important problem in current applications in management or econometrics. An important problem from a practical point of view is the sensitivity of machine learning methods with respect to the presence of outlying data values, while numerical stability represents another important aspect of data mining from high-dimensional data. This paper gives an overview of various types of data mining, discusses their suitability for high-dimensional data and critically discusses their properties from the robustness point of view, while we explain that the robustness itself is perceived differently in different contexts.Moreover, we investigate properties of a robust nonlinear regression estimator of Kalina (2013).http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_131-144.pdfData mininghigh-dimensional datarobust econometricsoutliers
collection DOAJ
language English
format Article
sources DOAJ
author Jan Kalina
spellingShingle Jan Kalina
http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdf
Serbian Journal of Management
Data mining
high-dimensional data
robust econometrics
outliers
author_facet Jan Kalina
author_sort Jan Kalina
title http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdf
title_short http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdf
title_full http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdf
title_fullStr http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdf
title_full_unstemmed http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_121-130.pdf
title_sort http://www.sjm06.com/sjm%20issn1452-4864/9_1_2014_may_1-144/9_1_2014_121-130.pdf
publisher University in Belgrade
series Serbian Journal of Management
issn 1452-4864
2217-7159
publishDate 2014-05-01
description Information extraction from high-dimensional data represents an important problem in current applications in management or econometrics. An important problem from a practical point of view is the sensitivity of machine learning methods with respect to the presence of outlying data values, while numerical stability represents another important aspect of data mining from high-dimensional data. This paper gives an overview of various types of data mining, discusses their suitability for high-dimensional data and critically discusses their properties from the robustness point of view, while we explain that the robustness itself is perceived differently in different contexts.Moreover, we investigate properties of a robust nonlinear regression estimator of Kalina (2013).
topic Data mining
high-dimensional data
robust econometrics
outliers
url http://www.sjm06.com/SJM%20ISSN1452-4864/9_1_2014_May_1-144/9_1_2014_131-144.pdf
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