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Lin Yuan [4]Ling Yuan [1]
  1.  25
    FAACOSE: A Fast Adaptive Ant Colony Optimization Algorithm for Detecting SNP Epistasis.Lin Yuan, Chang-An Yuan & De-Shuang Huang - 2017 - Complexity 2017:1-10.
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    Spontaneous Functional Network Dynamics and Associated Structural Substrates in the Human Brain.Xuhong Liao, Lin Yuan, Tengda Zhao, Zhengjia Dai, Ni Shu, Mingrui Xia, Yihong Yang, Alan Evans & Yong He - 2015 - Frontiers in Human Neuroscience 9.
  3.  5
    An Investigation of Stretched Exponential Function in Quantifying Long-Term Memory of Extreme Events Based on Artificial Data Following Lévy Stable Distribution.HongGuang Sun, Lin Yuan, Yong Zhang & Nicholas Privitera - 2018 - Complexity 2018:1-7.
    Extreme events, which are usually characterized by generalized extreme value models, can exhibit long-term memory, whose impact needs to be quantified. It was known that extreme recurrence intervals can better characterize the significant influence of long-term memory than using the GEV model. Our statistical analyses based on time series datasets following the Lévy stable distribution confirm that the stretched exponential distribution can describe a wide spectrum of memory behavior transition from exponentially distributed intervals to power-law distributed ones, extending the previous (...)
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    Bayesian Estimation of Shannon Entropy.Lin Yuan & H. K. Kesavan - 1997 - History and Philosophy of Logic 26 (1):139-148.
  5.  15
    Research of Deceptive Review Detection Based on Target Product Identification and Metapath Feature Weight Calculation.Ling Yuan, Dan Li, Shikang Wei & Mingli Wang - 2018 - Complexity 2018:1-12.
    It is widespread that the consumers browse relevant reviews for reference before purchasing the products when online shopping. Some stores or users may write deceptive reviews to mislead consumers into making risky purchase decisions. Existing methods of deceptive review detection did not consider the valid product review sets and classification probability of feature weights. In this research, we propose a deceptive review detection algorithm based on the target product identification and the calculation of the Metapath feature weight, noted as TM-DRD. (...)
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