Title of article :
An Ensemble Click Model for Web Document Ranking
Author/Authors :
Bidekani Bakhtiarvand, D Department of Artificial Intelligence - Faculty of Computer Engineering - K. N. Toosi University of Technology, Tehran, Iran , Farzi, S Department of Artificial Intelligence - Faculty of Computer Engineering - K. N. Toosi University of Technology, Tehran, Iran
Pages :
6
From page :
1208
To page :
1213
Abstract :
Annually, web search engine providers spend a lot of money on re-ranking documents in search engine result pages (SERP). Click models provide advantageous information for re-ranking documents in SERPs through modeling interactions among users and search engines. Here, three modules are employed to predict users' clicks on SERPs simultaneously, the first module tries to predict users' click behaviors using Probabilistic Graphical Models, the second module is a Time-series Deep Neural Click Model which predicts users' clicks on documents and finally, the third module is a similarity-based measure which creates a graph of document-query relations and uses SimRank Algorithm to predict the similarity. After running these three simultaneous processes, three click probability values are fed to an MLP classifier as inputs. The MLP classifier learns to decide on top of the three preceding modules, then it predicts a probability value which shows how probable a document is to be clicked by a user. The proposed system is evaluated on the Yandex dataset as a standard click log dataset. The results demonstrate the superiority of our model over the well-known click models in terms of perplexity.
Keywords :
Click Modeling , Document Re-ranking , Modeling Users' Behavior , Search Engine Result Page Enhancement
Journal title :
International Journal of Engineering
Serial Year :
2020
Record number :
2552783
Link To Document :
بازگشت