Machine-learnt models based on additive ensembles of binary regression trees are currently considered one of the best solutions to address complex classification, regression, and ranking tasks. To evaluate these complex models over a continuous stream of data items with high throughput requirements, we need to optimize, and possibly parallelize, the traversal of thousands of trees, each including hundreds of nodes.Document ranking in Web Search is a typical example of this challenging scenario, where complex tree-based models are used to score query-document pairs and finally rank lists of document results for each incoming query (a.k.a. Learning-to-Rank). In this extended abstract, we briefly discuss some preliminary results concerning the...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees is...
Learning-to-Rank models based on additive ensembles of regression trees have proven to be very effec...
Learning-to-Rank models based on additive ensembles of regression trees have proven to be very effec...
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 regression trees are currently deemed the best ...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
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...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees is...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees is...
Learning-to-Rank models based on additive ensembles of regression trees have proven to be very effec...
Learning-to-Rank models based on additive ensembles of regression trees have proven to be very effec...
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 regression trees are currently deemed the best ...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
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...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees is...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Learning-to-Rank models based on additive ensembles of regression trees have been proven to be very ...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees is...
Learning-to-Rank models based on additive ensembles of regression trees have proven to be very effec...
Learning-to-Rank models based on additive ensembles of regression trees have proven to be very effec...