遗传算法作为机器学习中特征选择的工具

H. Vafaie, K. D. Jong
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引用次数: 277

摘要

描述了一种正在探索的方法,以提高机器学习技术在为复杂的现实世界数据生成分类规则方面的有用性。该方法包括使用遗传算法作为传统规则归纳系统的前端,以识别和选择规则归纳系统使用的最佳特征子集。该方法已经在复杂的纹理分类问题上得到了实现和测试。结果令人鼓舞,表明该方法在该领域具有显著的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic algorithms as a tool for feature selection in machine learning
An approach being explored to improve the usefulness of machine learning techniques for generating classification rules for complex, real-world data is described. The approach involves the use of genetic algorithms as a front end to a traditional rule induction system in order to identify and select the best subset of features to be used by the rule induction system. This approach has been implemented and tested on difficult texture classification problems. The results are encouraging and indicate that there are significant advantages to the approach in this domain.<>
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