DocumentCode :
1091028
Title :
Fuzzy-Rough Sets Assisted Attribute Selection
Author :
Jensen, Richard ; Shen, Qiang
Author_Institution :
Dept. of Comput. Sci., Univ. of Wales, Aberystwyth
Volume :
15
Issue :
1
fYear :
2007
Firstpage :
73
Lastpage :
89
Abstract :
Attribute selection (AS) refers to the problem of selecting those input attributes or features that are most predictive of a given outcome; a problem encountered in many areas such as machine learning, pattern recognition and signal processing. Unlike other dimensionality reduction methods, attribute selectors preserve the original meaning of the attributes after reduction. This has found application in tasks that involve datasets containing huge numbers of attributes (in the order of tens of thousands) which, for some learning algorithms, might be impossible to process further. Recent examples include text processing and web content classification. AS techniques have also been applied to small and medium-sized datasets in order to locate the most informative attributes for later use. One of the many successful applications of rough set theory has been to this area. The rough set ideology of using only the supplied data and no other information has many benefits in AS, where most other methods require supplementary knowledge. However, the main limitation of rough set-based attribute selection in the literature is the restrictive requirement that all data is discrete. In classical rough set theory, it is not possible to consider real-valued or noisy data. This paper investigates a novel approach based on fuzzy-rough sets, fuzzy rough feature selection (FRFS), that addresses these problems and retains dataset semantics. FRFS is applied to two challenging domains where a feature reducing step is important; namely, web content classification and complex systems monitoring. The utility of this approach is demonstrated and is compared empirically with several dimensionality reducers. In the experimental studies, FRFS is shown to equal or improve classification accuracy when compared to the results from unreduced data. Classifiers that use a lower dimensional set of attributes which are retained by fuzzy-rough reduction outperform those that employ more attributes returned- by the existing crisp rough reduction method. In addition, it is shown that FRFS is more powerful than the other AS techniques in the comparative study
Keywords :
classification; data reduction; fuzzy set theory; learning (artificial intelligence); rough set theory; text analysis; Web content classification; attribute selection; complex systems monitoring; dimensionality reduction; fuzzy rough feature selection; fuzzy-rough sets; learning algorithm; text processing; Computer science; Fuzzy sets; Machine learning; Machine learning algorithms; Monitoring; Pattern recognition; Set theory; Signal processing algorithms; Text categorization; Text processing; Attribute selection; dimensionality reduction; fuzzy-rough sets; rough selection;
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/TFUZZ.2006.889761
Filename :
4088988
Link To Document :
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