A key challenge in information retrieval is that of on-line ranker evaluation: determining which one of a finite set of rankers performs the best in expectation on the basis of user clicks on presented document lists. When the presented lists are constructed using interleaved comparison methods, which interleave lists proposed by two different candidate rankers, then the problem of minimizing the total regret accumulated while evaluating the rankers can be formalized as a K-armed dueling bandits problem. In this paper, we propose a new method called relative confidence sampling (RCS) that aims to reduce cumulative regret by being less conservative than existing methods in eliminating rankers from contention. In addition, we present an empir...
In this work, we focus on modeling relative effectiveness of result sets to leverage multiple rankin...
The amount of digital data we produce every day far surpasses our ability to process this data, and ...
This paper proposes a new method for the K-armed dueling bandit problem, a variation on the regular ...
In every domain where a service or a product is provided, an important question is that of evaluatio...
A key challenge in information retrieval is that of on-line ranker evaluation: determining which one...
Ranker evaluation is central to the research into search engines, be it to compare rankers or to pro...
Ranker evaluation is central to the research into search engines, be it to compare rankers or to pro...
Evaluating rankers using implicit feedback, such as clicks on documents in a result list, is an incr...
A range of methods for measuring the effectiveness of information retrieval systems has been propose...
In this article we give an overview of our recent work on online learning to rank for information re...
Online evaluation methods for information retrieval use implicit signals such as clicks from users t...
Evaluation methods for information retrieval systems come in three types: offline evaluation, using ...
In this work we reproduce the experiments presented in the paper entitled \u201cRank-Biased Precisio...
Abstract Rank-Biased Precision (RBP) is a retrieval evaluation metric that assigns an effectiveness ...
Learning to rank is an increasingly important scientific field that comprises the use of machine lea...
In this work, we focus on modeling relative effectiveness of result sets to leverage multiple rankin...
The amount of digital data we produce every day far surpasses our ability to process this data, and ...
This paper proposes a new method for the K-armed dueling bandit problem, a variation on the regular ...
In every domain where a service or a product is provided, an important question is that of evaluatio...
A key challenge in information retrieval is that of on-line ranker evaluation: determining which one...
Ranker evaluation is central to the research into search engines, be it to compare rankers or to pro...
Ranker evaluation is central to the research into search engines, be it to compare rankers or to pro...
Evaluating rankers using implicit feedback, such as clicks on documents in a result list, is an incr...
A range of methods for measuring the effectiveness of information retrieval systems has been propose...
In this article we give an overview of our recent work on online learning to rank for information re...
Online evaluation methods for information retrieval use implicit signals such as clicks from users t...
Evaluation methods for information retrieval systems come in three types: offline evaluation, using ...
In this work we reproduce the experiments presented in the paper entitled \u201cRank-Biased Precisio...
Abstract Rank-Biased Precision (RBP) is a retrieval evaluation metric that assigns an effectiveness ...
Learning to rank is an increasingly important scientific field that comprises the use of machine lea...
In this work, we focus on modeling relative effectiveness of result sets to leverage multiple rankin...
The amount of digital data we produce every day far surpasses our ability to process this data, and ...
This paper proposes a new method for the K-armed dueling bandit problem, a variation on the regular ...