Application of the Fuzzy Classification for Linear Hybrid Prediction Methods

The paper discusses the problem of forecasting for samples with real-valued attributes. The goal is to estimate the effect of generated binary attributes on forecasting accuracy for the linear regression and the hybrid methods based on clustering. The initial set of attributes is expanded by binary...

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Main Authors: A. S. Taskin, E. M. Mirkes, N. Y. Sirotinina
Format: Article
Language:English
Published: Yaroslavl State University 2013-01-01
Series:Modelirovanie i Analiz Informacionnyh Sistem
Subjects:
Online Access:http://mais-journal.ru/jour/article/view/199
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spelling doaj-d7b1d358cc4e4cbc928892ba329387c12020-11-25T01:35:10ZengYaroslavl State UniversityModelirovanie i Analiz Informacionnyh Sistem1818-10152313-54172013-01-01203108120193Application of the Fuzzy Classification for Linear Hybrid Prediction MethodsA. S. Taskin0E. M. Mirkes1N. Y. Sirotinina2Сибирский федеральный университетСибирский федеральный университетСибирский федеральный университетThe paper discusses the problem of forecasting for samples with real-valued attributes. The goal is to estimate the effect of generated binary attributes on forecasting accuracy for the linear regression and the hybrid methods based on clustering. The initial set of attributes is expanded by binary attributes which are derived from the initial set by fuzzy classification. A comparative testing of the discussed forecasting methods on the initial samples and the resulting ones is performed. The test results on three different databases showed that the use of generated attributes for the classical linear regression resulted in the significant increase of the forecasting accuracy. In case of the linear regression with the clustering based on k-means the increase of forecasting accuracy was also observed. In case of the linear regression with the clustering based on the knn–method we registered a slight decrease, and an unstable result was obtained for the double linear regression.http://mais-journal.ru/jour/article/view/199линейная регрессиянечеткая классификациягибридные методы прогнозирования
collection DOAJ
language English
format Article
sources DOAJ
author A. S. Taskin
E. M. Mirkes
N. Y. Sirotinina
spellingShingle A. S. Taskin
E. M. Mirkes
N. Y. Sirotinina
Application of the Fuzzy Classification for Linear Hybrid Prediction Methods
Modelirovanie i Analiz Informacionnyh Sistem
линейная регрессия
нечеткая классификация
гибридные методы прогнозирования
author_facet A. S. Taskin
E. M. Mirkes
N. Y. Sirotinina
author_sort A. S. Taskin
title Application of the Fuzzy Classification for Linear Hybrid Prediction Methods
title_short Application of the Fuzzy Classification for Linear Hybrid Prediction Methods
title_full Application of the Fuzzy Classification for Linear Hybrid Prediction Methods
title_fullStr Application of the Fuzzy Classification for Linear Hybrid Prediction Methods
title_full_unstemmed Application of the Fuzzy Classification for Linear Hybrid Prediction Methods
title_sort application of the fuzzy classification for linear hybrid prediction methods
publisher Yaroslavl State University
series Modelirovanie i Analiz Informacionnyh Sistem
issn 1818-1015
2313-5417
publishDate 2013-01-01
description The paper discusses the problem of forecasting for samples with real-valued attributes. The goal is to estimate the effect of generated binary attributes on forecasting accuracy for the linear regression and the hybrid methods based on clustering. The initial set of attributes is expanded by binary attributes which are derived from the initial set by fuzzy classification. A comparative testing of the discussed forecasting methods on the initial samples and the resulting ones is performed. The test results on three different databases showed that the use of generated attributes for the classical linear regression resulted in the significant increase of the forecasting accuracy. In case of the linear regression with the clustering based on k-means the increase of forecasting accuracy was also observed. In case of the linear regression with the clustering based on the knn–method we registered a slight decrease, and an unstable result was obtained for the double linear regression.
topic линейная регрессия
нечеткая классификация
гибридные методы прогнозирования
url http://mais-journal.ru/jour/article/view/199
work_keys_str_mv AT astaskin applicationofthefuzzyclassificationforlinearhybridpredictionmethods
AT emmirkes applicationofthefuzzyclassificationforlinearhybridpredictionmethods
AT nysirotinina applicationofthefuzzyclassificationforlinearhybridpredictionmethods
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