基于遗传算法和粗糙集理论的税收属性约简

Xu Linzhang, Han Zhen, Zhang Yanning
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引用次数: 1

摘要

税收属性选择是税源分析中的一个难点问题。本文将基于遗传算法的粗糙集属性约简算法引入到税收属性约简中。该方法借鉴粗糙集中可靠性的概念,优化了适应度函数的配置,提高了原算法的收敛性,改变了当前遗传算法属性约简的局限性。该算法在不改变数据分类能力的前提下,从根本上实现了较小属性集的选择。经过测试是有效的。
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A Taxation attribute reduction based on genetic algorithm and rough set theory
Selection of taxation attributes is one difficult question in analyzing the sources of taxation. This paper introduces genetic-algorithm-based rough set attribute reduction algorithm into the job of taxation attribute reduction. By referring to the concept of dependability in rough set, this method optimizes the configuration of fitness function, improves the convergence of original algorithm and changes the limitation of current attribute reduction in genetic algorithm. This algorithm fundamentally realizes the selection of comparatively small attribute sets with the presupposition that the data classification ability is not changed. It is valid after being tested.
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