Studies in Science and Technology
Online ISSN : 2187-1590
Print ISSN : 2186-4942
ISSN-L : 2187-1590
Original Article
Automatic classifier algorithm selection using optimized meta-features
Hidetaka NamboAtsushi OtsukaHaruhiko KimuraYoshihiro Ueda
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JOURNAL FREE ACCESS

2016 Volume 5 Issue 2 Pages 179-184

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Abstract
With the arrival of big-data society, methods for classifying real-world problems have attracted much attention for researchers and developers in various fields. In recent years, much effort has been devoted for improving performances of classification algorithms by adding functions or modifying their weaknesses. However, since a large variety of classification algorithms has been available, it is difficult for non-experts to find classification algorithms that achieve good results on a given data set. Therefore, if there is a system which automatically selects the best classification algorithm for a given data set, non-experts would receive various benefits such as saving time and effort. This paper presents a system of predicting the best possible classification algorithm for a given data set with respect to the accuracy. The proposed system utilizes useful meta-features selected from existing meta-features to increase the performance of the prediction. The feature selection is conducted by a wrapper approach with the genetic search algorithm. In the proposed system, K-nearest neighbour algorithm is used to learn the selected meta-features and build a classification model for predicting future data. Experiments using 58 real-world data sets show that the proposed system predicted the best classification algorithm with 65.5% accuracy from the top five in 29 classification algorithms.
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© 2016 Society for Science and Technology

この記事はクリエイティブ・コモンズ [表示 - 非営利 - 改変禁止 4.0 国際]ライセンスの下に提供されています。
https://creativecommons.org/licenses/by-nc-nd/4.0/deed.ja
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