IRJun 9, 2013

Introducing LETOR 4.0 Datasets

arXiv:1306.2597v1450 citations
Originality Synthesis-oriented
AI Analysis

This provides a standardized resource for the information retrieval community, but it is incremental as it builds on previous versions with updated data.

The paper introduces LETOR 4.0, a new benchmark dataset for learning to rank research, using the Gov2 web collection and TREC query sets with labeled documents for about 2500 queries.

LETOR is a package of benchmark data sets for research on LEarning TO Rank, which contains standard features, relevance judgments, data partitioning, evaluation tools, and several baselines. Version 1.0 was released in April 2007. Version 2.0 was released in Dec. 2007. Version 3.0 was released in Dec. 2008. This version, 4.0, was released in July 2009. Very different from previous versions (V3.0 is an update based on V2.0 and V2.0 is an update based on V1.0), LETOR4.0 is a totally new release. It uses the Gov2 web page collection (~25M pages) and two query sets from Million Query track of TREC 2007 and TREC 2008. We call the two query sets MQ2007 and MQ2008 for short. There are about 1700 queries in MQ2007 with labeled documents and about 800 queries in MQ2008 with labeled documents. If you have any questions or suggestions about the datasets, please kindly email us (letor@microsoft.com). Our goal is to make the dataset reliable and useful for the community.

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