62 / 2015-10-08 17:20:56
Social Network Data Anonymous Publishing Based on Evolutionary Algorithm
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全文录用
胡 琪 / 贵州大学
蒋 惠 / 贵州大学
王 媛 / 贵州大学
Abstract—Based on the needs of scientific development, a growing number of social network data to be shared and released. In order to ensure that the privacy of the individual's privacy is not leaked, privacy protection should be carried on before releasing social networks data. For re-identification attack of the node degree, we proposed an improved evolutionary algorithm that to carry out the k-degree anonymity for social networks data. This paper improved fitness function and end condition of the loop of EAGA algorithm, and obtained an optimal k-degree anonymous sequence. Then we obtained the optimal anonymous social network graph of k-degree by construct anonymous graph based on k-degree anonymous sequence that previous algorithms was generated. Experimental results show that the improved evolutionary algorithm not only reduces the modification of the original social network graph, keep the property of the graph structure is better than EAGA algorithms.
重要日期
  • 会议日期

    03月25日

    2016

    03月26日

    2016

  • 09月01日 2015

    提前注册日期

  • 12月31日 2015

    终稿截稿日期

  • 03月26日 2016

    注册截止日期

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