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Unified Algorithm for Undirected Discovery of Exception Rules

机译:定向发现规则的统一算法

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This paper presents an algorithm that seeks every possible exception rule which violates a common sense rule and satisfies several assumptions of simplicity. Exception rules, which represent systematic deviation from common sense rules, are often found interesting. Discovery of pairs that consist of a common sense rule and an exception rule, resulting from undirected search for unexpected exception rules, was successful in various domains. In the past, however, an exception rule represented a change of conclusion caused by adding an extra condition to the premise of a common sense rule. That approach formalized only one type of exceptions, and failed to represent other types. In order to provide a systematic treatment of exceptions, we categorize exception rules into eleven categories, and we propose a unified algorithm for discovering all of them. Preliminary results on fifteen real-world data sets provide an empirical proof of effectiveness of our algorithm in discovering interesting knowledge. The empirical results also match our theoretical analysis of exceptions, showing that the elevent types can be partitioned in three classes according to the frequency with which they occur in data.
机译:本文提出了一种算法,该算法寻找违反常识规则并满足一些简单性假设的所有可能的例外规则。异常规则代表了与常识规则的系统性偏离,通常很有趣。在各种领域中成功发现了由常识规则和例外规则组成的对,这是由于无意搜索意外的例外规则而导致的。但是,在过去,例外规则代表通过在常识规则的前提下增加额外条件而导致的结论变更。该方法仅将一种异常形式化,而不能代表其他类型。为了提供对异常的系统处理,我们将异常规则分为11类,并提出了用于发现所有异常的统一算法。 15个真实数据集的初步结果为我们的算法发现有趣知识的有效性提供了经验证明。经验结果也与我们对异常的理论分析相符,表明根据事件在数据中出现的频率,可以将事件类型分为三类。

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