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Similarity measure based on nonlinear compensatory model and fuzzy logic inference

机译:基于非线性补偿模型和模糊逻辑推理的相似性度量

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摘要

In this paper, we propose a novel nonlinear nearest-neighbor (NNN) matching for similarity measure based on nonlinear compensatory (NC) choice model. Based on fuzzy logic inference, we propose NC choice model which granulates the psychological boundary between linear and nonlinear compensatory in the decision-making. Based on our NC mode, we develop a NNN matching function to consider both linear and nonlinear psychological compensatory effects. Theory analysis and experiment have demonstrated the success of NNN matching and NC model.
机译:在本文中,我们基于非线性补偿(NC)选择模型,提出了一种用于相似性度量的新型非线性最近邻(NNN)匹配。在模糊逻辑推理的基础上,提出了数控选择模型,该模型可以使决策过程中线性补偿与非线性补偿之间的心理界限更加细化。基于我们的NC模式,我们开发了一个NNN匹配函数来考虑线性和非线性心理补偿效应。理论分析和实验证明了NNN匹配和NC模型的成功。

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