DocumentCode :
3119218
Title :
ReliefF for Multi-label Feature Selection
Author :
Spolaor, Newton ; Alvares Cherman, Everton ; Monard, Maria Carolina ; Lee, Hwi Don
Author_Institution :
Lab. of Comput. Intell., Univ. of Sao Paulo, Sao Carlos, Brazil
fYear :
2013
fDate :
19-24 Oct. 2013
Firstpage :
6
Lastpage :
11
Abstract :
The feature selection process aims to select a subset of relevant features to be used in model construction, reducing data dimensionality by removing irrelevant and redundant features. Although effective feature selection methods to support single-label learning are abound, this is not the case for multi-label learning. Furthermore, most of the multi-label feature selection methods proposed initially transform the multi-label data to single-label in which a traditional feature selection method is then applied. However, the application of single-label feature selection methods after transforming the data can hinder exploring label dependence, an important issue in multi-label learning. This work proposes a new multi-label feature selection algorithm, RF-ML, by extending the single-label feature selection ReliefF algorithm. RF-ML, unlike strictly univariate measures for feature ranking, takes into account the effect of interacting attributes to directly deal with multi-label data without any data transformation. Using synthetic datasets, the proposed algorithm is experimentally compared to the ReliefF algorithm in which the multi-label data has been previously transformed to single-label data using two well-known data transformation approaches. Results show that the proposed algorithm stands out by ranking the relevant features as the best ones more often.
Keywords :
feature selection; learning (artificial intelligence); RF-ML; ReliefF algorithm; data dimensionality; data transformation; label dependence; model construction; multilabel data; multilabel feature selection methods; multilabel learning; single-label data; single-label feature selection methods; single-label learning; subset selection; synthetic datasets; Educational institutions; Hamming distance; High definition video; Noise; Noise level; Systematics; Transforms; Hamming distance; RReliefF; feature ranking; filter feature selection; systematic review;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Systems (BRACIS), 2013 Brazilian Conference on
Conference_Location :
Fortaleza
Type :
conf
DOI :
10.1109/BRACIS.2013.10
Filename :
6726418
Link To Document :
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