关联规则的鲁棒性

P. Lenca, B. Vaillant, S. Lallich
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引用次数: 17

摘要

关联规则发现是数据库知识发现的重要任务之一。然后,由类似优先级的算法生成的规则通常用于基于专家和知识的系统和/或人类最终用户的决策辅助。不幸的是,这种算法可能会产生大量的规则,因此当今关联规则发现中最重要的步骤之一是评估和解释它们的有趣性。客观度量提供关于规则质量的数字信息,如果度量对规则的评价大于用户定义的阈值,则将规则称为“质量”。本文提出了一种新的关联规则客观兴趣度度量的特异性:阈值敏感性。通过处理这个问题,我们打算提供衡量规则利益的强度/稳健性的方法。我们提出了一个一般框架,使我们能够确定规则在保持可接受的情况下可以失去的示例数,用于一组经典措施,这些措施是信心的转换
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the robustness of association rules
Association rules discovery is one of the most important tasks in knowledge discovery in data bases. The rules produced with a priori-like algorithms are then usually used for decision aiding in expert and knowledge based systems and/or by a human end user. Unfortunately such algorithms may produce huge amounts of rules and thus one of the most important steps in association rules discovery nowadays is the evaluation and the interpretation of their interestingness. Objective measures provide numerical information on the quality of a rule and a rule is said "of quality" if its evaluation by a measure is greater than a user defined threshold. In this paper we propose a new specificity of association rule objective interestingness measures: the threshold sensitivity. By dealing with this problem we intend to provide means of measuring the strength/robustness of the interest of a rule. We propose a general framework allowing us to determine the number of examples that a rule can lose while remaining acceptable, for a panel of classical measures that are transformation of the confidence
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