Authors
Emine Yilmaz,
Stephen Robertson,
Publication date
2010
Publisher
Springer Netherlands
Total citations
Description
Most current machine learning methods for building search engines are based on the assumption that there is a target evaluation metric that evaluates the quality of the search engine with respect to an end user and the engine should be trained to optimize for that metric. Treating the target evaluation metric as a given, many different approaches (e.g. LambdaRank, SoftRank, RankingSVM, etc.) have been proposed to develop methods for optimizing for retrieval metrics. Target metrics used in optimization act as bottlenecks that summarize the training data and it is known that some evaluation metrics are more informative than others. In this paper, we consider the effect of the target evaluation metric on learning to rank. In particular, we question the current assumption that retrieval systems should be designed to directly optimize for a metric that is assumed to evaluate user satisfaction. We show that even if …