Question processing for comparative and evaluative questions for business intelligence

Business analysis assists companies in making decisions but business data are too massive, and computations using database queries are complicated. There is a need for an intuitive questions answering question (QA) system for business intelligence which answers questions in natural language. The res...

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Bibliographic Details
Main Authors: Choi, Kenston, Pacana, Rosalyn Marget, Tan, Adrian Lester, Yiu, Jonathan
Format: text
Language:English
Published: Animo Repository 2010
Online Access:https://animorepository.dlsu.edu.ph/etd_bachelors/11864
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Institution: De La Salle University
Language: English
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Summary:Business analysis assists companies in making decisions but business data are too massive, and computations using database queries are complicated. There is a need for an intuitive questions answering question (QA) system for business intelligence which answers questions in natural language. The research focuses on interpreting and answering comparative and evaluative questions, which involves semantic analysis, mapping of comparative and evaluative predicates with their corresponding quantifiable set of criteria for evaluation, processing the question representation, and generating the answer. Company transactions from business news are manually populated to form the business data, and predicates, templates, and other domain information are defined. The system supports different forms of questions like conjunctions, disjunctions, superlatives, and negations, represents at least 15 predicates including computation of trends, and provides question construction assistance, answer elaborations, and customizable domain information. The research resulted to a multi-domain QA framework with a QA system for the domain of pharmacy customized and tested. Invited experts saw the benefits and potential of the research and the system in many areas like decision making in internal affairs. The system is able to answer the questions with accuracy, although some ambiguous question constructs and support for discourse still have to be worked on. Integration with an information extraction component that will populate the domain data will make the system more useful.