Learning an effective ranking function from a large number of query-document examples is a challenging task. Indeed, training sets where queries are associated with a few relevant documents and a large number of irrelevant ones are required to model real scenarios of Web search production systems, where a query can possibly retrieve thousands of matching documents, but only a few of them are actually relevant. In this paper, we propose Selective Gradient Boosting (SelGB), an algorithm addressing the Learning-to-Rank task by focusing on those irrelevant documents that are most likely to be mis-ranked, thus severely hindering the quality of the learned model. SelGB exploits a novel technique minimizing the mis-ranking risk, i.e., the probabil...
A lack of reliable relevance labels for training ranking functions is a significant problem for many...
In this thesis, we discuss two issues in the learning to rank area, choosing effective objective lo...
Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit g...
Learning an effective ranking function from a large number of query-document examples is a challengi...
Learning to Rank is the task of learning a ranking function from a set of query-documents pairs. Gen...
In this paper we address the issue of learning to rank for document retrieval. In the task, a model ...
The problem of ranking the documents according to their relevance to a given query is a hot topic in...
Machine-learned ranking functions have shown successes in Web search engines. With the increasing de...
Learning-to-Rank (LtR) solutions are commonly used in large-scale information retrieval systems such...
Learning-to-Rank (LtR) solutions are commonly used in large-scale information retrieval systems such...
Learning-to-Rank (LtR) techniques leverage machine learning algorithms and large amounts of training...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
We present a general boosting method extending functional gradient boosting to optimize complex loss...
A lack of reliable relevance labels for training ranking functions is a significant problem for many...
In this thesis, we discuss two issues in the learning to rank area, choosing effective objective lo...
Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit g...
Learning an effective ranking function from a large number of query-document examples is a challengi...
Learning to Rank is the task of learning a ranking function from a set of query-documents pairs. Gen...
In this paper we address the issue of learning to rank for document retrieval. In the task, a model ...
The problem of ranking the documents according to their relevance to a given query is a hot topic in...
Machine-learned ranking functions have shown successes in Web search engines. With the increasing de...
Learning-to-Rank (LtR) solutions are commonly used in large-scale information retrieval systems such...
Learning-to-Rank (LtR) solutions are commonly used in large-scale information retrieval systems such...
Learning-to-Rank (LtR) techniques leverage machine learning algorithms and large amounts of training...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
We present a general boosting method extending functional gradient boosting to optimize complex loss...
A lack of reliable relevance labels for training ranking functions is a significant problem for many...
In this thesis, we discuss two issues in the learning to rank area, choosing effective objective lo...
Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit g...