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2015年05月05日

【期刊论文】Behavioral Modeling With New Bio-inspired Coordination Generalized Molecular Model Algorithm

冯翔, Francis C.M. Lau, 虞慧群

Information Sciences,2013,252(12):1-19

2013年12月10日

摘要

Social Networks (SN) is an increasingly popular topic in artificial intelligence research. One of the key directions is to model and study the behaviors of social agents. In this paper, we propose a new computational model which can serve as a powerful tool for the analysis of SN. Specifically, we add to the traditional socio metric methods a novel analytical method in order to deal with social behaviors more effectively, and then present a new bio-inspired model, the coordination generalized molecule model (CGMM). The proposed analytical method for social behaviors and CGMM are combined to give an algorithm that can be used to solve complex problems in SN. Traditionally, SN models were mainly descriptive and were built at a very coarse level, typically with only a few global parameters, and turned out to be not sufficiently useful for analyzing social behaviors. In this work, we explore bio-inspired analytical models for analyzing social behaviors of intelligent agents. Our objective is to propose an effective and practical method to model intelligent systems and their behaviors in an open and complex unpredictable world.

Social networks (, SN), , Social behavior, Social coordination, Coordination generalized molecule model (, CGMM),

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  • 冯翔 邀请

    华东理工大学,上海

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