large-scale knowledge base
Dialog-to-Action: Conversational Question Answering Over a Large-Scale Knowledge Base
We present an approach to map utterances in conversation to logical forms, which will be executed on a large-scale knowledge base. To handle enormous ellipsis phenomena in conversation, we introduce dialog memory management to manipulate historical entities, predicates, and logical forms when inferring the logical form of current utterances. Dialog memory management is embodied in a generative model, in which a logical form is interpreted in a top-down manner following a small and flexible grammar. We learn the model from denotations without explicit annotation of logical forms, and evaluate it on a large-scale dataset consisting of 200K dialogs over 12.8M entities. Results verify the benefits of modeling dialog memory, and show that our semantic parsing-based approach outperforms a memory network based encoder-decoder model by a huge margin.
- North America > United States > Hawaii > Honolulu County > Honolulu (0.04)
- North America > Canada > Quebec > Montreal (0.04)
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- Information Technology > Artificial Intelligence > Representation & Reasoning > Search (0.68)
- Information Technology > Artificial Intelligence > Natural Language > Question Answering (0.51)
- Information Technology > Artificial Intelligence > Machine Learning > Inductive Learning (0.46)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Expert Systems (0.42)
Reviews: Dialog-to-Action: Conversational Question Answering Over a Large-Scale Knowledge Base
This paper proposes a semantic parsing method for dialog-based QA over a large-scale knowledge base. The method significantly outperforms the existing state of the art on CSQA, a recently-released conversational QA dataset. One of the major novelties of this paper is breaking apart the logical forms in the dialog history into smaller subsequences, any of which can be copied over into the logical form for the current question. While I do have some concerns with the method and the writing (detailed below), overall I liked this paper and I think that some of the ideas within it could be useful more broadly for QA researchers. Detailed comments: - I found many parts of the paper to be confusing, requiring multiple reads to fully understand.
Retrieval-Generation Alignment for End-to-End Task-Oriented Dialogue System
Shen, Weizhou, Gao, Yingqi, Huang, Canbin, Wan, Fanqi, Quan, Xiaojun, Bi, Wei
Developing an efficient retriever to retrieve knowledge from a large-scale knowledge base (KB) is critical for task-oriented dialogue systems to effectively handle localized and specialized tasks. However, widely used generative models such as T5 and ChatGPT often struggle to differentiate subtle differences among the retrieved KB records when generating responses, resulting in suboptimal quality of generated responses. In this paper, we propose the application of maximal marginal likelihood to train a perceptive retriever by utilizing signals from response generation for supervision. In addition, our approach goes beyond considering solely retrieved entities and incorporates various meta knowledge to guide the generator, thus improving the utilization of knowledge. We evaluate our approach on three task-oriented dialogue datasets using T5 and ChatGPT as the backbone models. The results demonstrate that when combined with meta knowledge, the response generator can effectively leverage high-quality knowledge records from the retriever and enhance the quality of generated responses. The codes and models of this paper are available at https://github.com/shenwzh3/MK-TOD.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
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Dialog-to-Action: Conversational Question Answering Over a Large-Scale Knowledge Base
Guo, Daya, Tang, Duyu, Duan, Nan, Zhou, Ming, Yin, Jian
We present an approach to map utterances in conversation to logical forms, which will be executed on a large-scale knowledge base. To handle enormous ellipsis phenomena in conversation, we introduce dialog memory management to manipulate historical entities, predicates, and logical forms when inferring the logical form of current utterances. Dialog memory management is embodied in a generative model, in which a logical form is interpreted in a top-down manner following a small and flexible grammar. We learn the model from denotations without explicit annotation of logical forms, and evaluate it on a large-scale dataset consisting of 200K dialogs over 12.8M entities. Results verify the benefits of modeling dialog memory, and show that our semantic parsing-based approach outperforms a memory network based encoder-decoder model by a huge margin.
Dialog-to-Action: Conversational Question Answering Over a Large-Scale Knowledge Base
Guo, Daya, Tang, Duyu, Duan, Nan, Zhou, Ming, Yin, Jian
We present an approach to map utterances in conversation to logical forms, which will be executed on a large-scale knowledge base. To handle enormous ellipsis phenomena in conversation, we introduce dialog memory management to manipulate historical entities, predicates, and logical forms when inferring the logical form of current utterances. Dialog memory management is embodied in a generative model, in which a logical form is interpreted in a top-down manner following a small and flexible grammar. We learn the model from denotations without explicit annotation of logical forms, and evaluate it on a large-scale dataset consisting of 200K dialogs over 12.8M entities. Results verify the benefits of modeling dialog memory, and show that our semantic parsing-based approach outperforms a memory network based encoder-decoder model by a huge margin.
- North America > United States > New York (0.04)
- North America > United States > Pennsylvania (0.04)
- North America > United States > Hawaii > Honolulu County > Honolulu (0.04)
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- Information Technology > Artificial Intelligence > Natural Language > Grammars & Parsing (0.74)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Search (0.68)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Expert Systems (0.62)
- (2 more...)
Dialog-to-Action: Conversational Question Answering Over a Large-Scale Knowledge Base
Guo, Daya, Tang, Duyu, Duan, Nan, Zhou, Ming, Yin, Jian
We present an approach to map utterances in conversation to logical forms, which will be executed on a large-scale knowledge base. To handle enormous ellipsis phenomena in conversation, we introduce dialog memory management to manipulate historical entities, predicates, and logical forms when inferring the logical form of current utterances. Dialog memory management is embodied in a generative model, in which a logical form is interpreted in a top-down manner following a small and flexible grammar. We learn the model from denotations without explicit annotation of logical forms, and evaluate it on a large-scale dataset consisting of 200K dialogs over 12.8M entities. Results verify the benefits of modeling dialog memory, and show that our semantic parsing-based approach outperforms a memory network based encoder-decoder model by a huge margin.
- North America > United States > Pennsylvania (0.04)
- North America > United States > New York (0.04)
- North America > United States > Hawaii > Honolulu County > Honolulu (0.04)
- (7 more...)
- Information Technology > Artificial Intelligence > Natural Language > Grammars & Parsing (0.74)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Search (0.68)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Expert Systems (0.62)
- (2 more...)
Cognonto Empowers Knowledge-based Artificial Intelligence
CORALVILLE, Iowa--(BUSINESS WIRE)--Cognonto, a new start-up in knowledge-based artificial intelligence (KBAI), announced today the dual release of its Cognonto Platform and KBpedia, a computable knowledge structure to automate much of the effort needed for machine learning. KBpedia leverages six large-scale knowledge bases -- Wikipedia, Wikidata, GeoNames, OpenCyc, DBpedia and UMBEL -- into a single structure expressly designed to support artificial intelligence (AI) within enterprises. "Many of the AI advances in recent years, such as question answering on smart phones or systems that beat human contestants in Jeopardy, are built around Web knowledge bases like Wikipedia," said Michael Bergman, a co-founder of Cognonto. "But these are one-off systems that only the largest tech firms or research outfits can afford," he said. "The idea behind Cognonto is to democratize this process such that any enterprise can afford to train their own machine learners or gain the advantages of knowledge-based artificial intelligence."
- North America > United States > Iowa > Johnson County > Coralville (0.29)
- North America > Canada > Quebec > Capitale-Nationale Region > Québec (0.06)
- North America > Canada > Quebec > Capitale-Nationale Region > Quebec City (0.06)