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Based on Attribute Order for Dynamic Attribute Reduction in the Incomplete Information System

机译:基于不完整信息系统的动态属性降低的属性顺序

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As the real-world information system is constantly updated, knowledge acquisition based on the need of users has become an important issue in current data mining. Attribute order can reflect the user's needs and interests, which reflects the importance of attributes to different users. In this paper, we first make use of the extended rough sets model with limited tolerance relationships and provide a new information entropy function. Then we compute an attribute reduction in a dynamic incomplete decision system on the basic of the attribute order. Moreover, when we consider the case of adding or deleting an object by the incomplete information system, an incremental reduction algorithm and a reduced reduction algorithm are given. Experiments show that the feasibility and effectiveness of the proposed algorithm.
机译:由于现实世界信息系统不断更新,基于用户需求的知识获取已成为当前数据挖掘的重要问题。属性顺序可以反映用户的需求和兴趣,这反映了属性对不同用户的重要性。在本文中,我们首先利用扩展的粗糙集模型,具有有限的公差关系,并提供新的信息熵函数。然后我们在属性顺序的基本上计算动态不完整决策系统的属性减少。此外,当我们考虑通过不完全信息系统添加或删除对象的情况时,给出增量减少算法和减少的减少算法。实验表明,所提出的算法的可行性和有效性。

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