We propose a model that leverages the millions of clicks received by web search engines to predict document relevance. This allows the comparison of ranking functions when clicks are available but complete relevance judgments are not. After an initial training phase using a set of relevance judgments paired with click data, we show that our model can predict the relevance score of documents that have not been judged. These predictions can be used to evaluate the performance of a search engine, using our novel formalization of the confidence of the standard evaluation metric discounted cumulative gain (DCG), so comparisons can be made across time and datasets. This contrasts with previous methods which can provide only pair-wise relevance ju...
Web search has become a part of everyday life for hundreds of millions of users around the world. Ho...
The present disclosure describes computer-implemented systems and methods for improving image-based ...
Part of the Computer Sciences Commons This Article is brought to you for free and open access by the...
We propose a model that leverages the millions of clicks received by web search engines to predict d...
We propose a model that leverages the millions of clicks received by web search engines to predict d...
The web is a highly dynamic environment: documents disap-pear or become outdated, new documents appe...
Evaluation of search engine result relevance has traditionally been an expensive process done by hum...
Information retrieval systems have traditionally been evaluated over absolute judgments of relevance...
Learning-to-rank algorithms, which can automatically adapt ranking functions in web search, require ...
Search sessions consist of a person presenting a query to a search engine, followed by that person e...
Effective ranking functions are an essential part of commercial search engines. We focus on developi...
Various click models have been recently proposed as a principled approach to infer the relevance of ...
A standard approach to estimating online click-based met-rics of a ranking function is to run it in ...
In this thesis, we aim at improving the search result quality by utilizing the search intelligence (...
We explore the potential of using users click-through logs where no editorial judgment is available ...
Web search has become a part of everyday life for hundreds of millions of users around the world. Ho...
The present disclosure describes computer-implemented systems and methods for improving image-based ...
Part of the Computer Sciences Commons This Article is brought to you for free and open access by the...
We propose a model that leverages the millions of clicks received by web search engines to predict d...
We propose a model that leverages the millions of clicks received by web search engines to predict d...
The web is a highly dynamic environment: documents disap-pear or become outdated, new documents appe...
Evaluation of search engine result relevance has traditionally been an expensive process done by hum...
Information retrieval systems have traditionally been evaluated over absolute judgments of relevance...
Learning-to-rank algorithms, which can automatically adapt ranking functions in web search, require ...
Search sessions consist of a person presenting a query to a search engine, followed by that person e...
Effective ranking functions are an essential part of commercial search engines. We focus on developi...
Various click models have been recently proposed as a principled approach to infer the relevance of ...
A standard approach to estimating online click-based met-rics of a ranking function is to run it in ...
In this thesis, we aim at improving the search result quality by utilizing the search intelligence (...
We explore the potential of using users click-through logs where no editorial judgment is available ...
Web search has become a part of everyday life for hundreds of millions of users around the world. Ho...
The present disclosure describes computer-implemented systems and methods for improving image-based ...
Part of the Computer Sciences Commons This Article is brought to you for free and open access by the...