Machine-learnt models based on additive ensembles of regression trees are currently deemed the best solution to address complex classification, regression, and ranking tasks. The deployment of such models is computationally demanding: to compute the final prediction, the whole ensemble must be traversed by accumulating the contributions of all its trees. In particular, traversal cost impacts applications where the number of candidate items is large, the time budget available to apply the learnt model to them is limited, and the users’ expectations in terms of quality-of-service is high. Document ranking in web search, where sub-optimal ranking models are deployed to find a proper trade-off between efficiency and effectiveness of query answe...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Data mining refers to the process of finding hidden patterns inside a large dataset. While improving...
In this paper, we present ScalParC (Scalable Parallel Classifier), a new parallel formulation of a d...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
Machine-learnt models based on additive ensembles of binary regression trees are currently considere...
Machine-learnt models based on additive ensembles of binary regression trees are currently considere...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
We are at the beginning of the multicore era. Computers will have increasingly many cores (processor...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees cu...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
With the emergence of big data, inducting regression trees on very large data sets became a common d...
Machine learning algorithms are now being deployed in practically all areas of our lives. Part of th...
This paper presents a study that discusses how multi-threading can be used to improve the runtime pe...
High-performance computing (HPC) and machine learning (ML) have been widely adopted by both academia...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Data mining refers to the process of finding hidden patterns inside a large dataset. While improving...
In this paper, we present ScalParC (Scalable Parallel Classifier), a new parallel formulation of a d...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
Machine-learnt models based on additive ensembles of binary regression trees are currently considere...
Machine-learnt models based on additive ensembles of binary regression trees are currently considere...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
We are at the beginning of the multicore era. Computers will have increasingly many cores (processor...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees cu...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
With the emergence of big data, inducting regression trees on very large data sets became a common d...
Machine learning algorithms are now being deployed in practically all areas of our lives. Part of th...
This paper presents a study that discusses how multi-threading can be used to improve the runtime pe...
High-performance computing (HPC) and machine learning (ML) have been widely adopted by both academia...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Data mining refers to the process of finding hidden patterns inside a large dataset. While improving...
In this paper, we present ScalParC (Scalable Parallel Classifier), a new parallel formulation of a d...