Extracting Characteristics of Items Based on Patterns in Recommendation Graphs

نویسندگان

  • Daisuke KITAYAMA
  • Kazutoshi SUMIYA
چکیده

On online shopping sites such as Amazon and Rakuten, recommended items are displayed along with the items being viewed. We consider that certain recommended items reflect the characteristics of the viewed item. For example, “DVD-R” may be recommended with “Printer,” whereas “Printer” might not have the recommended item “DVD-R.” In this case, we may assume that the item “Printer” can print a label on a “DVD-R.” Thus, a set of items can be expressed as a directed graph structure, which comprises items as nodes and recommendation relations as edges. In this paper, we propose a method for extracting item characteristics based on the patterns in recommendation graphs. We also present an evaluation based on comparisons among items.

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تاریخ انتشار 2014