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[Author] John F. RODDICK(2hit)

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  • Hide Association Rules with Fewer Side Effects

    Peng CHENG  Ivan LEE  Jeng-Shyang PAN  Chun-Wei LIN  John F. RODDICK  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2015/07/14
      Vol:
    E98-D No:10
      Page(s):
    1788-1798

    Association rule mining is a powerful data mining tool, and it can be used to discover unknown patterns from large volumes of data. However, people often have to face the risk of disclosing sensitive information when data is shared with different organizations. The association rule mining techniques may be improperly used to find sensitive patterns which the owner is unwilling to disclose. One of the great challenges in association rule mining is how to protect the confidentiality of sensitive patterns when data is released. Association rule hiding refers to sanitize a database so that certain sensitive association rules cannot be mined out in the released database. In this study, we proposed a new method which hides sensitive rules by removing some items in a database to reduce the support or confidence levels of sensitive rules below specified thresholds. Based on the information of positive border rules and negative border rules contained in transactions, the proposed method chooses suitable candidates for modification aimed at reducing the side effects and the data distortion degree. Comparative experiments on real datasets and synthetic datasets demonstrate that the proposed method can hide sensitive rules with much fewer side effects and database modifications.

  • A Digital Image Watermarking Method Based on Labeled Bisecting Clustering Algorithm

    Shu-Chuan CHU  John F. RODDICK  Zhe-Ming LU  Jeng-Shyang PAN  

     
    LETTER-Information Security

      Vol:
    E87-A No:1
      Page(s):
    282-285

    This paper presents a novel digital image watermarking algorithm based on the labeled bisecting clustering technique. Each cluster is labeled either '0' or '1' based on the labeling key. Each input image block is then assigned to the nearest codeword or cluster centre whose label is equal to the watermark bit. The watermark extraction can be performed blindly. The proposed method is robust to JPEG compression and some spatial-domain processing operations. Simulation results demonstrate the effectiveness of the proposed algorithm.