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Titlebook: Rough Set–Based Classification Systems; Robert K. Nowicki Book 2019 Springer Nature Switzerland AG 2019 Rough Sets Theory.Computational In

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发表于 2025-3-21 17:43:17 | 显示全部楼层 |阅读模式
书目名称Rough Set–Based Classification Systems
编辑Robert K. Nowicki
视频video
概述Allows the reader to successfully work with sets of indistinguishable values and missing values.Develops decision-making systems in two configurations: iterative and collective.Written by respected ex
丛书名称Studies in Computational Intelligence
图书封面Titlebook: Rough Set–Based Classification Systems;  Robert K. Nowicki Book 2019 Springer Nature Switzerland AG 2019 Rough Sets Theory.Computational In
描述This book demonstrates an original concept for implementing the rough set theory in the construction of decision-making systems. It addresses three types of decisions, including those in which the information or input data is insufficient. Though decision-making and classification in cases with missing or inaccurate data is a common task, classical decision-making systems are not naturally adapted to it. One solution is to apply the rough set theory proposed by Prof. Pawlak..The proposed classifiers are applied and tested in two configurations: The first is an iterative mode in which a single classification system requests completion of the input data until an unequivocal decision (classification) is obtained. It allows us to start classification processes using very limited input data and supplementing it only as needed, which limits the cost of obtaining data. The second configuration is an ensemble mode in which several rough set-based classification systems achieve the unequivocal decision collectively, even though the systems cannot separately deliver such results..
出版日期Book 2019
关键词Rough Sets Theory; Computational Intelligence; Decision Making; Rough Neural Networks; Fuzzy Rough Class
版次1
doihttps://doi.org/10.1007/978-3-030-03895-3
isbn_ebook978-3-030-03895-3Series ISSN 1860-949X Series E-ISSN 1860-9503
issn_series 1860-949X
copyrightSpringer Nature Switzerland AG 2019
The information of publication is updating

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Rough Neural Network Classifier,ence. Now, the catalogue of neural networks is quite rich including many recurrent networks (NN) like Hopfield NN, Boltzmann machine, restricted Boltzmann machine, dynamic neural networks and deep neural networks. The most spectacular results are obtained using a few types of deep convolutional networks.
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Rough Nearest Neighbour Classifier,tion is really high. In this chapter, a rough version of the algorithm will be presented. At the beginning, the basic version of the .-nearest neighbour classifier will be recalled, and then a rough version prepared for missing data will be proposed.
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Rough Set Theory Fundamentals,e International Journal of Computer and Information Sciences Pawlak (Int J Comput Inf Sci 11:341–356, 1982 [.]). This theory shows that a description of objects in our environment can be more or less detailed. A description can contain information about various features, and the precision of this in
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Rough Nearest Neighbour Classifier,an be easily adapted to work with missing data using simple marginalisation or other preprocessing [., ., ., .]. Moreover, the efficiency of this solution is really high. In this chapter, a rough version of the algorithm will be presented. At the beginning, the basic version of the .-nearest neighbo
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