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Retrieval performance prediction and document quality

Yun Zhou, University of Massachusetts Amherst

Abstract

The ability to predict retrieval performance has potential applications in many important IR (Information Retrieval) areas. In this thesis, we study the problem of predicting retrieval quality at the granularity of both the retrieved document set as a whole and individual retrieved documents. At the level of ranked lists of documents, we propose several novel prediction models that capture different aspects of the retrieval process that have a major impact on retrieval effectiveness. These techniques make performance prediction both effective and efficient in various retrieval settings including a Web search environment. As an application, we also provide a framework to address the problem of query expansion prediction. At the level of documents, we predict the quality of documents in the context of Web ad-hoc retrieval. We explore document features that are predictive of quality. Furthermore, we propose a document quality language model to improve retrieval effectiveness by incorporating quality information.

Subject Area

Computer science

Recommended Citation

Zhou, Yun, "Retrieval performance prediction and document quality" (2008). Doctoral Dissertations Available from Proquest. AAI3315475.
https://scholarworks.umass.edu/dissertations/AAI3315475

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