Article ID Journal Published Year Pages File Type
409166 Neurocomputing 2008 13 Pages PDF
Abstract

A parameterless feature ranking approach is presented for feature selection in the pattern classification task. Compared with Battiti's mutual information feature selection (MIFS) and Kwak and Choi's MIFS-U methods, the proposed method derives an estimation of the conditional MI between the candidate feature fi and the output class C given the subset of selected features S, i.e. I(C;fi∣S), without any parameters like β in MIFS and MIFS-U methods to be preset. Thus, the intractable problem can be avoided completely, which is how to choose an appropriate value for β to achieve the tradeoff between the relevance to the output classes and the redundancy with the already-selected features. Furthermore, a modified greedy feature selection algorithm called the second order MI feature selection approach (SOMIFS) is proposed. Experimental results demonstrate the superiority of SOMIFS in terms of both synthetic and benchmark data sets.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
, , ,