Most modern web search engines yield a list of documents of a fixed length (usually 10) in response to a user query. The next ten search results are usually available in one click. These documents either replace the current result page or are appended to the end. Hence, in order to examine more documents than the first 10 the user needs to explicitly express her intention. Although clickthrough numbers are lower for documents on the second and later result pages, they still represent a noticeable amount of trac. We propose a modification of the Dynamic Bayesian Net-work (DBN) click model by explicitly including into the model the probability of transition between result pages. We show that our new click model can significantly better captur...
Search engines can record which documents were clicked for which query, and use these query-document...
The web is a highly dynamic environment: documents disap-pear or become outdated, new documents appe...
In this paper, we develop and evaluate several probabilistic models of user click-through behavior t...
Most modern web search engines yield a list of documents of a fixed length (usually 10) in response ...
Recent advances in click modeling have established it as an attractive approach to interpret search ...
Modeling user behavior on a search engine result page is important for understanding the users and s...
Modeling user behavior on a search engine result page is important for understanding the users and s...
Getting a better understanding of user behavior is important for advancing information retrieval sys...
Recent advances in click model have positioned it as an attractive method for representing user pref...
Recent advances in click model have positioned it as an attractive method for representing user pref...
With the rapid growth of web search in recent years the problem of modeling its users has started to...
ABSTRACT Click-through behaviors are treated as invaluable sources of user feedback and they have be...
This paper presents a novel document relevance model based on clickthrough information. Compared to ...
Web search has become a fundamental means for massive users to find information. As a result, huge a...
Click model has been positioned as an effective approach to interpret user click behavior in search ...
Search engines can record which documents were clicked for which query, and use these query-document...
The web is a highly dynamic environment: documents disap-pear or become outdated, new documents appe...
In this paper, we develop and evaluate several probabilistic models of user click-through behavior t...
Most modern web search engines yield a list of documents of a fixed length (usually 10) in response ...
Recent advances in click modeling have established it as an attractive approach to interpret search ...
Modeling user behavior on a search engine result page is important for understanding the users and s...
Modeling user behavior on a search engine result page is important for understanding the users and s...
Getting a better understanding of user behavior is important for advancing information retrieval sys...
Recent advances in click model have positioned it as an attractive method for representing user pref...
Recent advances in click model have positioned it as an attractive method for representing user pref...
With the rapid growth of web search in recent years the problem of modeling its users has started to...
ABSTRACT Click-through behaviors are treated as invaluable sources of user feedback and they have be...
This paper presents a novel document relevance model based on clickthrough information. Compared to ...
Web search has become a fundamental means for massive users to find information. As a result, huge a...
Click model has been positioned as an effective approach to interpret user click behavior in search ...
Search engines can record which documents were clicked for which query, and use these query-document...
The web is a highly dynamic environment: documents disap-pear or become outdated, new documents appe...
In this paper, we develop and evaluate several probabilistic models of user click-through behavior t...