Learning Automatic Question Answering from Community Data

Although traditional search engines can retrieval thousands or millions of web links related to input keywords, users still need to manually locate answers to their information needs from multiple returned documents or initiate further searches. Question Answering (QA) is an effective paradigm to ad...

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Main Author: Wang, Di
Language:en
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/10012/6995
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-69952013-10-04T04:11:53ZWang, Di2012-09-19T17:29:20Z2012-09-19T17:29:20Z2012-09-19T17:29:20Z2012-08-21http://hdl.handle.net/10012/6995Although traditional search engines can retrieval thousands or millions of web links related to input keywords, users still need to manually locate answers to their information needs from multiple returned documents or initiate further searches. Question Answering (QA) is an effective paradigm to address this problem, which automatically finds one or more accurate and concise answers to natural language questions. Existing QA systems often rely on off-the-shelf Natural Language Processing (NLP) resources and tools that are not optimized for the QA task. Additionally, they tend to require hand-crafted rules to extract properties from input questions which, in turn, means that it would be time and manpower consuming to build comprehensive QA systems. In this thesis, we study the potentials of using the Community Question Answering (cQA) archives as a central building block of QA systems. To that end, this thesis proposes two cQA-based query expansion and structured query generation approaches, one employed in Text-based QA and the other in Ontology-based QA. In addition, based on above structured query generation method, an end-to-end open-domain Ontology-based QA is developed and evaluated on a standard factoid QA benchmark.enQuestion AnsweringInformation RetrievalLearning Automatic Question Answering from Community DataThesis or DissertationSchool of Computer ScienceMaster of MathematicsComputer Science
collection NDLTD
language en
sources NDLTD
topic Question Answering
Information Retrieval
Computer Science
spellingShingle Question Answering
Information Retrieval
Computer Science
Wang, Di
Learning Automatic Question Answering from Community Data
description Although traditional search engines can retrieval thousands or millions of web links related to input keywords, users still need to manually locate answers to their information needs from multiple returned documents or initiate further searches. Question Answering (QA) is an effective paradigm to address this problem, which automatically finds one or more accurate and concise answers to natural language questions. Existing QA systems often rely on off-the-shelf Natural Language Processing (NLP) resources and tools that are not optimized for the QA task. Additionally, they tend to require hand-crafted rules to extract properties from input questions which, in turn, means that it would be time and manpower consuming to build comprehensive QA systems. In this thesis, we study the potentials of using the Community Question Answering (cQA) archives as a central building block of QA systems. To that end, this thesis proposes two cQA-based query expansion and structured query generation approaches, one employed in Text-based QA and the other in Ontology-based QA. In addition, based on above structured query generation method, an end-to-end open-domain Ontology-based QA is developed and evaluated on a standard factoid QA benchmark.
author Wang, Di
author_facet Wang, Di
author_sort Wang, Di
title Learning Automatic Question Answering from Community Data
title_short Learning Automatic Question Answering from Community Data
title_full Learning Automatic Question Answering from Community Data
title_fullStr Learning Automatic Question Answering from Community Data
title_full_unstemmed Learning Automatic Question Answering from Community Data
title_sort learning automatic question answering from community data
publishDate 2012
url http://hdl.handle.net/10012/6995
work_keys_str_mv AT wangdi learningautomaticquestionansweringfromcommunitydata
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