Authors
ChengXiang Zhai, William W Cohen, John Lafferty
Publication date
2015/6/23
Journal
Acm sigir forum
Volume
49
Issue
1
Pages
2-9
Publisher
ACM
Description
We present a non-traditional retrieval problem we call subtopic retrieval. The subtopic retrieval problem is concerned with finding documents that cover many different subtopics of a query topic. In such a problem, the utility of a document in a ranking is dependent on other documents in the ranking, violating the assumption of independent relevance which is assumed in most traditional retrieval methods. Subtopic retrieval poses challenges for evaluating performance, as well as for developing effective algorithms. We propose a framework for evaluating subtopic retrieval which generalizes the traditional precision and recall metrics by accounting for intrinsic topic difficulty as well as redundancy in documents. We propose and systematically evaluate several methods for performing subtopic retrieval using statistical language models and a maximal marginal relevance (MMR) ranking strategy. A mixture model …
Total citations
2004200520062007200820092010201120122013201420152016201720182019202020212022202320245813153644598271795543594133262023232014