2017
Conference article  Restricted

RankEval: an evaluation and analysis framework for learning-to-rank solutions

Lucchese C., Muntean C. I., Nardini F. M., Perego R., Trani S.

Learning to rank 

In this demo paper we propose RankEval, an open-source tool for the analysis and evaluation of Learning-to-Rank (LtR) models based on ensembles of regression trees. Gradient Boosted Regression Trees (GBRT) is a flexible statistical learning technique for classification and regression at the state of the art for training effective LtR solutions. Indeed, the success of GBRT fostered the development of several open-source LtR libraries targeting efficiency of the learning phase and effectiveness of the resulting models. However, these libraries offer only very limited help for the tuning and evaluation of the trained models. In addition, the implementations provided for even the most traditional IR evaluation metrics differ from library to library, thus making the objective evaluation and comparison between trained models a difficult task. RankEval addresses these issues by providing a common ground for LtR libraries that offers useful and interoperable tools for a comprehensive comparison and in-depth analysis of ranking models.

Source: SIGIR '17 - 40th International ACM SIGIR Conference on Research and Development in Information Retrieval, pp. 1281–1284, Tokyo, Japan, 9-11 August 2017


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:381010,
	title = {RankEval: an evaluation and analysis framework for learning-to-rank solutions},
	author = {Lucchese C. and Muntean C. I. and Nardini F. M. and Perego R. and Trani S.},
	doi = {10.1145/3077136.3084140},
	booktitle = {SIGIR '17 - 40th International ACM SIGIR Conference on Research and Development in Information Retrieval, pp. 1281–1284, Tokyo, Japan, 9-11 August 2017},
	year = {2017}
}

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