Browsing 08 Information and Computing Sciences by Author "Xiao Yan Shan"

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Browsing 08 Information and Computing Sciences by Author "Xiao Yan Shan"

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  • Cao Longbing; Luo Dan; Xiao Yan Shan; Zheng Zhigang (Springer Berlin, 2008)
    The collaboration of agents can undertake complicated tasks that cannot be handled well by a single agent. This is even true for excecuting multiple goals at the same time. In this paper, we demonstrate the use of trading ...
  • Liu Bo; Yin Jie; Xiao Yan Shan; Cao Longbing; Yu Philip (IEEE, 2010)
    This paper presents a novel hybrid approach to outlier detection by incorporating local data uncertainty into the construction of a global classifier. To deal with local data uncertainty, we introduce a confidence value ...
  • Xiao Yan Shan; Liu Bo; Cao Longbing (ACM, 2010)
    Support vector data description (SVDD) is very useful for oneclass classification. However, it incurs high time complexity in handling large scale data. In this paper, we propose a novel and efficient method, named ...
  • Xiao Yan Shan; Deng Feiqi; Liu Bo; Liu Shouqiang; Luo Dan; Liang Guohua (IEEE CS digital library & Springer, 2008)
    The Third International Workshop on Agents and Data Mining Interaction (ADMIâ¿¿08) joint with the 2008 IEEE/WIC/ACM International Conference on Web Intelligence and Intelligent Agent Technology. In addition, an EDITED ...
  • Xiao Yan Shan; Liu Bo; Luo Dan; Cao Longbing; Deng Feiqi; Hao Zhifeng (Inderscience, 2010)
    In this paper, we introduce multiple agents, knowledge discovery and data mining into customer relationship management (CRM) to set up the architecture of a multi-agent-based CRM system (MAB-CRM), and then use the SVMs-based ...
  • Xiao Yan Shan; Liu Bo; Luo Dan; Cao Longbing (Springer Berlin / Heidelb, 2008)
    Distributed data mining in the CRM is to learn available knowledge from the customer relationship so as to instruct the strategic behavior. In order to resolve the CRM in distributed data mining, this paper proposes the ...
  • Xiao Yan Shan; Liu Bo; Cao Longbing; Wu Xindong; Zhang Chengqi; Hao Zhifeng; Cao Jie; Yang Fengzhao (IEEE Computer Society Press, 2009)
    SVDD has been proved a powerful tool for outlier detection. However, in detecting outliers on multi-distribution data, namely there are distinctive distributions in the data, it is very challenging for SVDD to generate a ...
  • Liu Bo; Xiao Yan Shan; Cao Longbing; Yu Philip (SDM, 2011)
    This paper presents a novel approach to one-class-based uncertain data stream learning. Our proposed approach works in three steps. Firstly, we put forward a local kerneldensity-based method to generate a bound score for ...
  • Liu Bo; Xiao Yan Shan; Cao Longbing; Yu Philip (ACM, 2010)
    Feature extraction is an effective step in data mining and machine learning. While many feature extraction methods have been proposed for clustering, classification and regression, very limited work has been done on ...
  • Xiao Yan Shan; Liu Bo; Cao Longbing; Yin Jie; Wu Xindong (IEEE Computer Society Conference Publishing Services (CPS), 2010)
    Multiple instance learning (MIL) is a generalization of supervised learning which attempts to learn useful information from bags of instances. In MIL, the true labels of the instances in positive bags are not always available ...
  • Liu Bo; Xiao Yan Shan; Cao Longbing; Yu Philip (IEEE Computer Society Conference Publishing Services (CPS), 2010)
    In this paper, we extend LELC (PU Learning by Extracting Likely Positive and Negative Micro-Clusters) method to cope with positive and unlabeled data streams. Our developed approach, which is called vote-based LELC, works ...