论文标题

机器学习中关键物体处理的有限模糊可能的方法

Bounded Fuzzy Possibilistic Method of Critical Objects Processing in Machine Learning

论文作者

Yazdani, Hossein

论文摘要

学习方法的不满意精度主要是由于省略重要参数的影响,例如会员分配,数据对象类型以及距离或相似性功能而引起的。所提出的方法称为有界模糊的可能性方法(BFPM)解决了以前的聚类或分类方法在其成员分配中未充分考虑的不同问题。在模糊方法中,对象的成员资格应总计为1。因此,任何数据对象最多都可以在一个集群或类中获得完整的成员资格。可能的方法放松了这种情况,但是即使仅一个任意对象从一个群集中获得成员资格,该方法也可以对结果满足,从而阻止对象的运动分析。而BFPM通过消除这些限制而与以前的模糊和可能的方法有所不同。此外,BFPM为对象的运动分析提供了灵活的搜索空间。数据对象也被视为学习方法中的基本密钥,并且知道确切的对象类型会导致为学习算法提供合适的环境。该论文引入了一种新型的对象,称为关键对象,并将数据对象分为两个不同的类别:基于结构的和基于行为的类别。关键对象被认为是学习程序中错过分类和错过分配的原因。该论文还提出了新的方法来研究关键对象的行为,目的是评估对象的运动(突变)从一个群集或阶级到另一个集群。该论文还引入了一种称为主导力的新型特征,该功能被认为是遗漏分类和错过分配的原因之一。然后,论文提出了一组新的相似性功能,称为加权特征距离(WFD)和优先加权距离(PWFD)。

Unsatisfying accuracy of learning methods is mostly caused by omitting the influence of important parameters such as membership assignments, type of data objects, and distance or similarity functions. The proposed method, called Bounded Fuzzy Possibilistic Method (BFPM) addresses different issues that previous clustering or classification methods have not sufficiently considered in their membership assignments. In fuzzy methods, the object's memberships should sum to 1. Hence, any data object may obtain full membership in at most one cluster or class. Possibilistic methods relax this condition, but the method can be satisfied with the results even if just an arbitrary object obtains the membership from just one cluster, which prevents the objects' movement analysis. Whereas, BFPM differs from previous fuzzy and possibilistic approaches by removing these restrictions. Furthermore, BFPM provides the flexible search space for objects' movement analysis. Data objects are also considered as fundamental keys in learning methods, and knowing the exact type of objects results in providing a suitable environment for learning algorithms. The Thesis introduces a new type of object, called critical, as well as categorizing data objects into two different categories: structural-based and behavioural-based. Critical objects are considered as causes of miss-classification and miss-assignment in learning procedures. The Thesis also proposes new methodologies to study the behaviour of critical objects with the aim of evaluating objects' movements (mutation) from one cluster or class to another. The Thesis also introduces a new type of feature, called dominant, that is considered as one of the causes of miss-classification and miss-assignments. Then the Thesis proposes new sets of similarity functions, called Weighted Feature Distance (WFD) and Prioritized Weighted Feature Distance (PWFD).

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