Machine-learnt models based on additive ensembles of binary regression trees are currently deemed the best solution to address complex classification, regression, and ranking tasks. Evaluating these models is a computationally demanding task as it needs to traverse thousands of trees with hundreds of nodes each. The cost of traversing such large forests of trees significantly impacts their application to big and stream input data, when the time budget available for each prediction is limited to guarantee a given processing throughput. Document ranking in Web search is a typical example of this challenging scenario, where the exploitation of tree-based models to score query-document pairs, and finally rank lists of documents for each incomin...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
The present invention concerns a novel method to efficiently score documents (texts, images, audios,...
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...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
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...
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 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 ...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
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 regression trees are currently deemed the best ...
The present invention concerns a novel method to efficiently score documents (texts, images, audios,...
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...
Machine-learnt models based on additive ensembles of binary regression trees are currently deemed th...
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...
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 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 ...
Machine-learnt models based on additive ensembles of regression trees are currently deemed the best ...
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 regression trees are currently deemed the best ...
The present invention concerns a novel method to efficiently score documents (texts, images, audios,...
Scoring documents with learning-to-rank (LtR) models based on large ensembles of regression trees cu...