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Physical Sciences and Mathematics Commons

Open Access. Powered by Scholars. Published by Universities.®

University of Massachusetts Amherst

2014

Information Retrieval

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Full-Text Articles in Physical Sciences and Mathematics

Retrieval Models Based On Linguistic Features Of Verbose Queries, Jae Hyun Park Nov 2014

Retrieval Models Based On Linguistic Features Of Verbose Queries, Jae Hyun Park

Doctoral Dissertations

Natural language expressions are more familiar to users than choosing keywords for queries. Given that, people can use natural language expressions to represent their sophisticated information needs. Instead of listing keywords, verbose queries are expressed in a grammatically well-formed phrase or sentence in which terms are used together to represent the more specific meanings of a concept, and the relationships of these concepts are expressed by function words. The goal of this thesis is to investigate methods of using the semantic and syntactic features of natural language queries to maximize the effectiveness of search. For this purpose, we propose the …


Entity-Based Enrichment For Information Extraction And Retrieval, Jeffrey Dalton Aug 2014

Entity-Based Enrichment For Information Extraction And Retrieval, Jeffrey Dalton

Doctoral Dissertations

The goal of this work is to leverage cross-document entity relationships for improved understanding of queries and documents. We define an entity to be a thing or concept that exists in the world, such as a politician, a battle, a film, or a color. Entity-based enrichment (EBE) is a new expansion model for both queries and documents using features from similar entitymentions in the document collection and external knowledge resources. It uses task-specific features from entities beyond words that include: name aliases, fine-grained entity types, categories, and relationships to other entities. EBE addresses the problem of sparse or noisy local …


Indexing Proximity-Based Dependencies For Information Retrieval, Samuel Huston Apr 2014

Indexing Proximity-Based Dependencies For Information Retrieval, Samuel Huston

Doctoral Dissertations

Research into term dependencies for information retrieval has demonstrated that dependency retrieval models are able to consistently improve retrieval effectiveness over bag-of-words models. However, the computation of term dependency statistics is a major efficiency bottleneck in the execution of these retrieval models. This thesis investigates the problem of improving the efficiency of dependency retrieval models without compromising the effectiveness benefits of the term dependency features. Despite the large number of published comparisons between dependency models and bag-of-words approaches, there has been a lack of direct comparisons between alternate dependency models. We provide this comparison and investigate different types of proximity …