规则提取算法的评价

T. Gopikrishna
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引用次数: 6

摘要

对于数据挖掘领域,缺乏解释设施似乎是基于人工神经网络的技术的一个严重缺点,或者,就这一点而言,任何产生不透明模型的技术都是如此。特别是,生成甚至有限解释的能力对于用户接受此类系统绝对至关重要。由于大多数数据挖掘系统的目的是支持决策制定,因此显然需要这些系统中的解释工具。因此,数据挖掘者的任务是识别可能延续到生产数据的复杂但一般的关系,而解释功能使这更容易。还重点分析了提取规则的质量;例如,所要求的解释执行得有多好。本文讨论了一些重要的规则提取算法,并对算法复杂度进行了识别;即底层规则提取算法的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Rule Extraction Algorithms
For the data mining domain, the lack of explanation facilities seems to be a serious drawback for techniques based on Artificial Neural Networks, or, for that matter, any technique producing opaque models In particular, the ability to generate even limited explanations is absolutely crucial for user acceptance of such systems. Since the purpose of most data mining systems is to support decision making, the need for explanation facilities in these systems is apparent. The task for the data miner is thus to identify the complex but general relationships that are likely to carry over to production data and the explanation facility makes this easier. Also focused the quality of the extracted rules; i.e. how well the required explanation is performed. In this research some important rule extraction algorithms are discussed and identified the algorithmic complexity; i.e. how efficient the underlying rule extraction algorithm is.
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