Models for first order rough logic applications to data mining

T.Y. Lin, Qing Liu, Xiaoling Zuo
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引用次数: 2

Abstract

Pawlak's rough set theory has inspired many logical investigations. In their joint paper, T.Y. Lin and Q. Liu have introduced first order rough logic based on their axiomatic characterization of rough sets. In this paper, rough model are fine tuned. Two rough models an defined. Based on new rough models, completeness of rough logic system is indicated for each respective model. Pawlak information system is viewed as rough model, and data mining is formulated in terms of first order rough logic.
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一阶粗糙逻辑在数据挖掘中的应用模型
Pawlak的粗糙集理论启发了许多逻辑研究。在他们的联合论文中,Lin T.Y.和Q. Liu基于粗糙集的公理化表征引入了一阶粗糙逻辑。本文对粗模型进行了微调。定义了两个粗略模型。在新的粗糙模型的基础上,给出了每个模型的逻辑系统完备性。Pawlak信息系统被视为粗糙模型,数据挖掘是用一阶粗糙逻辑来表述的。
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