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A relevance model based filter for improving ad quality
2009
Proceedings of the 32nd international ACM SIGIR conference on Research and development in information retrieval - SIGIR '09
Recently there has been a surge in research that predicts retrieval relevance using historical click-through data [5] . While a larger number of clicks between a query and a document provides a stronger "confidence" of relevance, most models in the literature that learn from clicks are error-prone as they do not take into account any confidence estimates. Sponsored Search models are especially prone to this error as they are typically trained on search engine logs in order to predict
doi:10.1145/1571941.1572116
dblp:conf/sigir/RaghavanH09
fatcat:oiwxsexghzamzfbs2oex5e3ne4