2016
Conference article  Restricted

Improve ranking efficiency by optimizing tree ensembles

Lucchese C, Nardini Fm, Orlando S, Perego R, Silvestri F, Trani S

Learning to Rank  Efficiency  Pruning 

Learning to Rank (LtR) is the machine learning method of choice for producing highly effective ranking functions. However, efficiency and effectiveness are two competing forces and trading off effiectiveness for meeting efficiency constraints typical of production systems is one of the most urgent issues. This extended abstract shortly summarizes the work in [4] proposing CLEaVER, a new framework for optimizing LtR models based on ensembles of regression trees. We summarize the results of a comprehensive evaluation showing that CLEaVER is able to prune up to 80% of the trees and provides an efficiency speed-up up to 2:6x without affecting the effectiveness of the model.

Source: CEUR WORKSHOP PROCEEDINGS. Venezia, Italia, 30-31 May 2016



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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:366631,
	title = {Improve ranking efficiency by optimizing tree ensembles},
	author = {Lucchese C and Nardini Fm and Orlando S and Perego R and Silvestri F and Trani S},
	booktitle = {CEUR WORKSHOP PROCEEDINGS. Venezia, Italia, 30-31 May 2016},
	year = {2016}
}