In this work, Metzler describes highly effective information retrieval models for both smaller, classical data sets, and larger Web collections. In a shift away from heuristic, hand-tuned ranking functions and complex probabilistic models, he presents feature-based retrieval models. The Markov random field model he details goes beyond the traditional yet ill-suited bag of words assumption in two ways. First, the model can easily exploit various types of dependencies that exist between query terms, eliminating the term independence assumption that often accompanies bag of words models. Second, arbitrary textual or non-textual features can be used within the model. As he shows, combining term dependencies and arbitrary features results in a very robust, powerful retrieval model. In addition, he describes several extensions, such as an automatic feature selection algorithm and a query expansion framework. The resulting model and extensions provide a flexible framework for highly effective retrieval across a wide range of tasks and data sets.
A Feature-Centric View of Information Retrieval provides graduate students, as well as academic and industrial researchers in the fields of information retrieval and Web search with a modern perspective on informationretrieval modeling and Web searches.
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"This book is organized in 6 chapters (Introduction, Classical retrieval models, Feature-based ranking, Feature-based query expansion, Query-dependent feature weighting, Model learning), two appendices (Data sets and Evaluation metrics) and a comprehensive bibliography. ... The book is recommended for an advanced master's or PhD-level course in information retrieval, being also a valuable reference for the researchers with professional interests in this domain." (Mirel Cosulschi, Zentralblatt MATH, Vol. 1235, 2012)