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      KBQA: Learning Question Answering over QA Corpora and Knowledge Bases

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          Abstract

          Question answering (QA) has become a popular way for humans to access billion-scale knowledge bases. Unlike web search, QA over a knowledge base gives out accurate and concise results, provided that natural language questions can be understood and mapped precisely to structured queries over the knowledge base. The challenge, however, is that a human can ask one question in many different ways. Previous approaches have natural limits due to their representations: rule based approaches only understand a small set of "canned" questions, while keyword based or synonym based approaches cannot fully understand the questions. In this paper, we design a new kind of question representation: templates, over a billion scale knowledge base and a million scale QA corpora. For example, for questions about a city's population, we learn templates such as What's the population of \(city?, How many people are there in \)city?. We learned 27 million templates for 2782 intents. Based on these templates, our QA system KBQA effectively supports binary factoid questions, as well as complex questions which are composed of a series of binary factoid questions. Furthermore, we expand predicates in RDF knowledge base, which boosts the coverage of knowledge base by 57 times. Our QA system beats all other state-of-art works on both effectiveness and efficiency over QALD benchmarks.

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          Building Watson: An Overview of the DeepQA Project

          IBM Research undertook a challenge to build a computer system that could compete at the human champion level in real time on the American TV Quiz show, Jeopardy! The extent of the challenge includes fielding a real-time automatic contestant on the show, not merely a laboratory exercise. The Jeopardy! Challenge helped us address requirements that led to the design of the DeepQA architecture and the implementation of Watson. After 3 years of intense research and development by a core team of about 20 researches, Watson is performing at human expert-levels in terms of precision, confidence and speed at the Jeopardy! Quiz show. Our results strongly suggest that DeepQA is an effective and extensible architecture that may be used as a foundation for combining, deploying, evaluating and advancing a wide range of algorithmic techniques to rapidly advance the field of QA.
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            Wide-Coverage Efficient Statistical Parsing with CCG and Log-Linear Models

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              Scaling question answering to the web

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                Author and article information

                Journal
                06 March 2019
                Article
                10.14778/3055540.3055549
                1903.02419
                50622d90-10a5-4c1e-8a65-3fc0f6a08264

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                Proceedings of the VLDB Endowment, Volume 10 Issue 5, January 2017
                cs.CL

                Theoretical computer science
                Theoretical computer science

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