Relevance modeling and data fusion are powerful yet simple approaches to improving the effectiveness of Information Retrieval Systems. For many of the classic TREC test collections, these approaches were used in many of the top performing retrieval systems. However, these approaches are often inefficient and are therefore rarely applied in production systems which must adhere to strict performance guarantees. Inspired by our recent work with human derived query variations, we propose a new sampling-based system which provides significantly better efficiency-effectiveness tradeoffs while leveraging both relevance modeling and data fusion. We show that our new end-to-end search system approaches the state-of-the-art in effectiveness while sti...
Heavily pre-trained transformers for language modeling, such as BERT, have shown to be remarkably ef...
A search engine that can return the ideal results for a person's information need, independent ...
How can a search engine with a relatively weak relevance ranking function compete with a search engi...
The generative theory for relevance and its operational manifestation --- the relevance model --- ar...
Information overload becomes an immediate issue as the Internet prospers. To improve information ret...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
Test collection design eliminates sources of user variability to make statistical comparisons among ...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
Search engines are based on models to index documents, match queries and documents and rank document...
A popular strategy for search result diversification is to first retrieve a set of documents utilizi...
Query expansion, in the form of pseudo-relevance feedback or relevance feedback, is a common techniq...
This paper describes a framework for investigating the quality of different query expansion approach...
International audienceA search engine generally applies a single search strategy to any user query. ...
We explore the implications of using query variations for evaluating information retrieval systems a...
Rank fusion is a powerful technique that allows multiple sources of information to be combined into ...
Heavily pre-trained transformers for language modeling, such as BERT, have shown to be remarkably ef...
A search engine that can return the ideal results for a person's information need, independent ...
How can a search engine with a relatively weak relevance ranking function compete with a search engi...
The generative theory for relevance and its operational manifestation --- the relevance model --- ar...
Information overload becomes an immediate issue as the Internet prospers. To improve information ret...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
Test collection design eliminates sources of user variability to make statistical comparisons among ...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
Search engines are based on models to index documents, match queries and documents and rank document...
A popular strategy for search result diversification is to first retrieve a set of documents utilizi...
Query expansion, in the form of pseudo-relevance feedback or relevance feedback, is a common techniq...
This paper describes a framework for investigating the quality of different query expansion approach...
International audienceA search engine generally applies a single search strategy to any user query. ...
We explore the implications of using query variations for evaluating information retrieval systems a...
Rank fusion is a powerful technique that allows multiple sources of information to be combined into ...
Heavily pre-trained transformers for language modeling, such as BERT, have shown to be remarkably ef...
A search engine that can return the ideal results for a person's information need, independent ...
How can a search engine with a relatively weak relevance ranking function compete with a search engi...