模糊关联规则的元模糊项

Carmen Biedma-Rdguez, M. J. Gacto, R. Alcalá, J. Alcalá-Fdez
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引用次数: 0

摘要

大量具有强大预测能力的系统,如深度学习,目前正被用于解决各种各样的实际问题。然而,获得的模型不容易被科学家理解,这就产生了可解释的人工智能领域,这鼓励了获得准确和可理解模型的技术。模糊关联规则是可以自己理解的模型,但可以通过使用更少、更简单的规则表示相同的信息来提高其可解释性。在这项工作中,我们提出了元模糊项,它允许定义更通用的模糊项来用更少的规则表示相同的信息,并扩展可以表示的关联类型。在此基础上,提出了一种新的模糊数据挖掘算法,用于从定量交易中提取有趣且可解释的规则。通过统计分析,并与一种著名的模糊数据挖掘算法进行了比较,分析了该方法的质量。
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Meta-Fuzzy Items for Fuzzy Association Rules
A large number of systems with a great predictive capacity, such as Deep Learning, are being currently used to solve a wide variety of real problems. However, the models obtained are not easy to understand by scientists, giving rise to the field of eXplainable Artificial Intelligence, which encourage techniques that obtain accurate and understandable models. Fuzzy Association Rules are models that can be understood by themselves, but its interpretability can be improved by representing the same information with fewer and simpler rules. In this work, we propose Meta-Fuzzy Items, which allows to define more generic fuzzy items to represent the same information with fewer rules, and to extend the type of associations that can be represented. Based on this proposal, a new fuzzy data-mining algorithm is presented to extract interesting and interpretable rules from quantitative transactions. The quality of our approach is analyzed using statistical analysis and comparing with a well-known fuzzy data-mining algorithm.
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