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Granule description based knowledge discovery from incomplete formal contexts via necessary attribute analysis

机译:通过必要的属性分析,基于不完整的正式上下文的知识发现基于知识发现

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Incomplete formal contexts are an extension of the classical formal contexts in which the relationship between some objects and attributes is unknown according to the current information. In fact, incomplete formal contexts are frequently encountered in human cognitive activities. This paper discusses knowledge discovery from incomplete formal contexts based on necessary attribute analysis, including granule description, cognitive concept learning and approximate decision rule mining. Specifically, we put forward a novel granule description method for knowledge discovery so that three-way concepts can be formed by attribute enrichment, and approximate decision rules can be mined via the detailed and concise descriptions of granules. Compared to the existing work, the time complexity of mining approximate decision rules is reduced sharply since only the closely related granules are needed in the proposed granule description method. (C) 2019 Elsevier Inc. All rights reserved.
机译:不完整的正式上下文是经典形式的延伸,其中一些对象和属性之间的关系根据当前信息而未知。 事实上,在人类认知活动中经常遇到不完整的正式背景。 本文根据必要的属性分析,讨论了从不完整的正式背景下的知识发现,包括颗粒描述,认知概念学习和近似决策规则挖掘。 具体地,我们提出了一种新的颗粒描述方法,用于知识发现,因此可以通过富集的特征富集形成三通概念,并且可以通过颗粒的详细和简明描述来开采近似决策规则。 与现有的工作相比,由于在所提出的颗粒描述方法中仅需要密切相关的颗粒,所以采矿近似决策规则的时间复杂性急剧下降。 (c)2019 Elsevier Inc.保留所有权利。

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