Hybrid Wrapper-Filter Approaches for Input Feature Selection Using Maximum Relevance and Artificial Neural Network Input Gain Measurement Approximation (ANNIGMA)

Md. Shamsul Huda, J. Yearwood, A. Stranieri
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引用次数: 16

Abstract

Feature selection is an important research problem in machine learning and data mining applications. This paper proposes a hybrid wrapper and filter feature selection algorithm by introducing the filter’s feature ranking score in the wrapper stage to speed up the search process for wrapper and thereby finding a more compact feature subset. The approach hybridizes a Mutual Information (MI) based Maximum Relevance (MR) filter ranking heuristic with an Artificial Neural Network (ANN) based wrapper approach where Artificial Neural Network Input Gain Measurement Approximation (ANNIGMA) has been combined with MR (MR-ANNIGMA) to guide the search process in the wrapper. The novelty of our approach is that we use hybrid of wrapper and filter methods that combines filter’s ranking score with the wrapper-heuristic’s score to take advantages of both filter and wrapper heuristics. Performance of the proposed MR-ANNIGMA has been verified using bench mark data sets and compared to both independent filter and wrapper based approaches. Experimental results show that MR-ANNIGMA achieves more compact feature sets and higher accuracies than both filter and wrapper approaches alone.
基于最大相关性和人工神经网络输入增益测量逼近的混合包装滤波输入特征选择方法
特征选择是机器学习和数据挖掘应用中的一个重要研究问题。本文提出了一种混合包装器和过滤器的特征选择算法,通过在包装器阶段引入过滤器的特征排名分数来加快包装器的搜索过程,从而找到更紧凑的特征子集。该方法将基于互信息(MI)的最大相关性(MR)过滤器排序启发式方法与基于人工神经网络(ANN)的包装器方法相结合,其中人工神经网络输入增益测量近似(ANNIGMA)与MR (MR-ANNIGMA)相结合,以指导包装器中的搜索过程。我们方法的新颖之处在于,我们使用包装器和过滤器方法的混合,将过滤器的排名分数与包装启发式的分数结合起来,以充分利用过滤器和包装启发式的优势。使用基准数据集验证了所提出的MR-ANNIGMA的性能,并将其与基于独立过滤器和包装器的方法进行了比较。实验结果表明,MR-ANNIGMA比单独使用滤波和包装方法获得了更紧凑的特征集和更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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