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Analyzing Attribute Dependencies

机译:分析属性依赖性

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摘要

Many effective and efficient learning algorithms assume independence of attributes. They often perform well even in domains where this assumption is not really true. However, they may fail badly when the degree of attribute dependencies becomes critical. In this paper, we examine methods for detecting deviations from independence. These dependencies give rise to "interactions" between attributes which affect the performance of learning algorithms. We first formally define the degree of interaction between attributes through the deviation of the best possible "voting" classifier from the true relation between the class and the attributes in a domain. Then we propose a practical heuristic for detecting attribute interactions, called interaction gain. We experimentally investigate the suitability of interaction gain for handling attribute interactions in machine learning. We also propose visualization methods for graphical exploration of interactions in a domain.
机译:许多有效的学习算法都假定属性独立。即使在这种假设并非真的情况下,它们也常常表现良好。但是,当属性依赖程度变得很关键时,它们可能会严重失败。在本文中,我们研究了检测独立性偏差的方法。这些依赖性导致属性之间的“相互作用”,从而影响学习算法的性能。我们首先通过最好的“投票”分类器与类和域中属性之间真实关系的偏离来正式定义属性之间的交互程度。然后,我们提出了一种用于检测属性交互的实用启发式方法,称为交互增益。我们通过实验研究了交互增益是否适合处理机器学习中的属性交互。我们还提出了可视化方法,以图形方式探索域中的交互。

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