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Fuzzy Comprehensive Evaluation on Digital Libraries Based on Membership Degree Transformation New Algorithm-M(1,2,3)

机译:基于隶属度转换的数字图书馆模糊综合评判新算法-M(1,2,3)

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摘要

In the evaluation process of digital libraries, there are many aspects needing to consider, with a lot of uncertainty and ambiguity, so it is reasonable and scientific to apply fuzzy comprehensive evaluation method for digital library fuzzy evaluation. The core of fuzzy evaluation is membership degree transformation. But the existing transformation methods should be questioned, because redundant data in index membership degree is also used to compute object membership degree, which is not useful for object classification. The new algorithm is: using data mining technology based on entropy to mine knowledge information about object classification hidden in every index, affirm the relationship of object classification and index membership, eliminate the redundant data in index membership for object classification by defining distinguishable weight and extract valid values to compute object membership. The new algorithm of membership degree transformation includes three calculation steps which can be summarized as "effective, comparison and composition", which is denoted as M(1,2,3). The paper applied the new algorithm in the fuzzy evaluation of digital libraries.
机译:在数字图书馆的评估过程中,有许多方面需要考虑,具有很多不确定性和歧义,因此对数字图书馆模糊评估应用模糊综合评估方法是合理和科学的。模糊评估的核心是会员度转换。但应质疑现有的转换方法,因为索引隶属度的冗余数据也用于计算对象隶属度,这对于对象分类无用。新算法是:使用基于熵的数据挖掘技术来挖掘对象分类的信息中隐藏在每个索引中,确认对象分类和索引成员资格的关系,通过定义可区分权重和提取来消除对象分类的索引成员资格中的冗余数据有效值以计算对象成员身份。隶属度转换的新算法包括三个计算步骤,可以总结为“有效,比较和组合物”,其表示为M(1,2,3)。本文应用了数字图书馆模糊评价的新算法。

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