Large scale retrieval systems often employ cascaded ranking architectures, in which an initial set of candidate documents are iteratively refined and re-ranked by increasingly sophisticated and expensive ranking models. In this paper, we propose a unified framework for predicting a range of performance-sensitive parameters based on minimizing end-to-end effectiveness loss. The framework does not require relevance judgments for training, is amenable to predicting a wide range of parameters, allows for fine tuned efficiency-effectiveness trade-offs, and can be easily deployed in large scale search systems with minimal overhead. As a proof of concept, we show that the framework can accurately predict a number of performance parameters on a que...
Query performance prediction (QPP) aims at automatically estimating the information retrieval system...
Processing top-k bag-of-words queries is critical to many information retrieval applications, includ...
International audienceModern Information Retrieval (IR) systems become more and more complex, involv...
Modern multi-stage retrieval systems are comprised of a candidate generation stage followed by one o...
Retrieval can be made more efficient by deploying dynamic pruning strategies such as WAND, which do ...
Large-scale retrieval systems are often implemented as a cascading sequence of phases-a first filter...
Search engines are exceptionally important tools for accessing information in today’s world. In sati...
The explosion of internet usage has provided users with access to information in an unprecedented sc...
Dynamic pruning strategies are effective yet permit efficient retrieval by pruning - i.e. not fully ...
The main goal of this thesis is to investigate query-dependent selection of retrieval alternatives f...
Modern search engines face enormous performance challenges. The most popular ones process tens of th...
There has been much work on devising query-performance prediction approaches that estimate search ef...
International audienceIt has been shown that there is not a best information retrieval system config...
Search engines are based on models to index documents, match queries and documents and rank document...
The query-performance prediction task has been described as estimating retrieval effectiveness in th...
Query performance prediction (QPP) aims at automatically estimating the information retrieval system...
Processing top-k bag-of-words queries is critical to many information retrieval applications, includ...
International audienceModern Information Retrieval (IR) systems become more and more complex, involv...
Modern multi-stage retrieval systems are comprised of a candidate generation stage followed by one o...
Retrieval can be made more efficient by deploying dynamic pruning strategies such as WAND, which do ...
Large-scale retrieval systems are often implemented as a cascading sequence of phases-a first filter...
Search engines are exceptionally important tools for accessing information in today’s world. In sati...
The explosion of internet usage has provided users with access to information in an unprecedented sc...
Dynamic pruning strategies are effective yet permit efficient retrieval by pruning - i.e. not fully ...
The main goal of this thesis is to investigate query-dependent selection of retrieval alternatives f...
Modern search engines face enormous performance challenges. The most popular ones process tens of th...
There has been much work on devising query-performance prediction approaches that estimate search ef...
International audienceIt has been shown that there is not a best information retrieval system config...
Search engines are based on models to index documents, match queries and documents and rank document...
The query-performance prediction task has been described as estimating retrieval effectiveness in th...
Query performance prediction (QPP) aims at automatically estimating the information retrieval system...
Processing top-k bag-of-words queries is critical to many information retrieval applications, includ...
International audienceModern Information Retrieval (IR) systems become more and more complex, involv...