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An improved relief feature selection algorithm based on Monte-Carlo tree search

机译:基于Monte-Carlo树搜索的改进浮雕特征选择算法

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摘要

The goal of feature selection methods is to find the optimal feature subset by eliminating irrelevant or redundant information from the original feature space according to some evaluation criteria. In the literature, the Relief algorithm is a typical feature selection method, which is simple and easy to execute. However, the classification accuracy of the Relief algorithm is usually affected by the noise. In recent years, the Monte Carlo Tree Search (MCTS) technique has achieved great success in strategy selections of large-scale systems by building a tree and quickly focusing on the most valuable part of the search space. In this paper, with the benefit of MCTS, an MCTS-based feature selection approach is proposed to deal with the feature selection problem of high dimensional data, where the Relief algorithm is used as the evaluation function of the MCTS approach. The effectiveness of the proposed approach is demonstrated by experiments on some benchmark problems.
机译:特征选择方法的目标是通过根据一些评估标准从原始特征空间中消除无关或冗余信息来找到最佳特征子集。在文献中,浮雕算法是典型的特征选择方法,简单且易于执行。但是,浮雕算法的分类准确性通常受噪声的影响。近年来,蒙特卡罗树搜索(MCTS)技术通过建造一棵树并快速关注搜索空间最有价值的部分的大规模系统的战略选择取得了巨大成功。本文在MCT的益处,提出了一种基于MCT的特征选择方法来处理高维数据的特征选择问题,其中浮雕算法用作MCTS方法的评估函数。通过实验证明了拟议方法的有效性在一些基准问题上证明了一些基准问题。

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