User-serp Interaction Prediction through Deep Multi-task Learning

نویسندگان

  • Wei Jiang
  • Damien Jose
  • Gargi Ghosh
چکیده

User behavior signals such as clicks are strong indicators of a search engines performance. Many existing search algorithms focus on predicting users interactions, by optimizing a relevance cost function for the query and individual web documents. The result set (list) is then generated by ranking web documents with this score. However, the probability of user interaction with a web document on a Search Engine Result Page (SERP) depends not only on a web document in isolation, but also other documents/elements present on the SERP. Our approach better predicts user interactions on web documents by not only considering the relevance of individual documents for a query, but also their interdependencies by modeling the interactions of a User on a SERP with a Multi-task Bidirectional Recurrent Neural Network (RNN).

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تاریخ انتشار 2018