Learning-to-Rank (LtR) solutions are commonly used in large-scale information retrieval systems such as Web search engines, which have to return highly relevant documents in response to user query within fractions of seconds. The most effective LtR algorithms adopt a gradient boosting approach to build additive ensembles of weighted regression trees. Since the required ranking effectiveness is achieved with very large ensembles, the impact on response time and query throughput of these solutions is not negligible. In this paper, we propose X-CLEaVER, an iterative meta-algorithm able to build more efficient and effective ranking ensembles. X-CLEaVER interleaves the iterations of a given gradient boosting learning algorithm with pruning and r...
peer reviewedIn this paper, we report on our experiments on the Yahoo! Labs Learning to Rank challen...
Random forest based Learning-to-rank (LtR) algorithms exhibit competitive performance to other state...
Learning to rank (LtR) techniques leverage assessed samples of query-document relevance to learn eff...
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) solutions are commonly used in large-scale information retrieval systems such...
Learning to Rank (LtR) is the machine learning method of choice for producing high quality document ...
Learning to Rank (LtR) is the machine learning method of choice for producing highly effective ranki...
Learning-to-Rank (LtR) techniques leverage machine learning algorithms and large amounts of training...
Learning an effective ranking function from a large number of query-document examples is a challengi...
In this paper we propose X-Dart, a new LtR algorithm focusing on the training of robust and compact ...
Machine-learned ranking functions have shown successes in Web search engines. With the increasing de...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
Learning-to-Rank (LtR) is the state-of-the-art methodology being used in modern Web Search Engines f...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
peer reviewedIn this paper, we report on our experiments on the Yahoo! Labs Learning to Rank challen...
Random forest based Learning-to-rank (LtR) algorithms exhibit competitive performance to other state...
Learning to rank (LtR) techniques leverage assessed samples of query-document relevance to learn eff...
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) solutions are commonly used in large-scale information retrieval systems such...
Learning to Rank (LtR) is the machine learning method of choice for producing high quality document ...
Learning to Rank (LtR) is the machine learning method of choice for producing highly effective ranki...
Learning-to-Rank (LtR) techniques leverage machine learning algorithms and large amounts of training...
Learning an effective ranking function from a large number of query-document examples is a challengi...
In this paper we propose X-Dart, a new LtR algorithm focusing on the training of robust and compact ...
Machine-learned ranking functions have shown successes in Web search engines. With the increasing de...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
Learning-to-Rank (LtR) is the state-of-the-art methodology being used in modern Web Search Engines f...
In May 2010 Yahoo! Inc. hosted the Learning to Rank Challenge. This paper summarizes the approach by...
peer reviewedIn this paper, we report on our experiments on the Yahoo! Labs Learning to Rank challen...
Random forest based Learning-to-rank (LtR) algorithms exhibit competitive performance to other state...
Learning to rank (LtR) techniques leverage assessed samples of query-document relevance to learn eff...