LB-KBQA:Large-language-model and BERT based Knowledge-Based Question and Answering System

Generative Artificial Intelligence (AI), because of its emergent abilities, has empowered various fields, one typical of which is large language models (LLMs). One of the typical application fields of Generative AI is large language models (LLMs), and the natural language understanding capability of...

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Published inIEEE International Conference on Industrial Informatics (INDIN) pp. 1 - 5
Main Authors Zhao, Yan, Li, Zhongyun, Pan, Yushan, Wang, Jiaxing, Zhang, Zhiman, Wang, Yihong
Format Conference Proceeding
LanguageEnglish
Published IEEE 18.08.2024
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ISSN2378-363X
DOI10.1109/INDIN58382.2024.10774538

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Abstract Generative Artificial Intelligence (AI), because of its emergent abilities, has empowered various fields, one typical of which is large language models (LLMs). One of the typical application fields of Generative AI is large language models (LLMs), and the natural language understanding capability of LLM is dramatically improved when compared with conventional AI-based methods. The natural language understanding capability has always been a barrier to the intent recognition performance of the Knowledge-Based-Question-and-Answer (KBQA) system, which arises from linguistic diversity and the newly appeared intent. Conventional AI-based methods for intent recognition can be divided into semantic parsing-based and model-based approaches. However, both of the methods suffer from limited resources in intent recognition. To address this issue, we propose a novel KBQA system based on a Large Language Model(LLM) and BERT (LB-KBQA). With the help of generative AI, our proposed method could detect newly appeared intent and acquire new knowledge. In experiments on financial domain question answering, our model has demonstrated superior effectiveness.
AbstractList Generative Artificial Intelligence (AI), because of its emergent abilities, has empowered various fields, one typical of which is large language models (LLMs). One of the typical application fields of Generative AI is large language models (LLMs), and the natural language understanding capability of LLM is dramatically improved when compared with conventional AI-based methods. The natural language understanding capability has always been a barrier to the intent recognition performance of the Knowledge-Based-Question-and-Answer (KBQA) system, which arises from linguistic diversity and the newly appeared intent. Conventional AI-based methods for intent recognition can be divided into semantic parsing-based and model-based approaches. However, both of the methods suffer from limited resources in intent recognition. To address this issue, we propose a novel KBQA system based on a Large Language Model(LLM) and BERT (LB-KBQA). With the help of generative AI, our proposed method could detect newly appeared intent and acquire new knowledge. In experiments on financial domain question answering, our model has demonstrated superior effectiveness.
Author Li, Zhongyun
Pan, Yushan
Zhang, Zhiman
Wang, Jiaxing
Zhao, Yan
Wang, Yihong
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Snippet Generative Artificial Intelligence (AI), because of its emergent abilities, has empowered various fields, one typical of which is large language models (LLMs)....
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StartPage 1
SubjectTerms Accuracy
Adaptation models
Adaptive learning
Generative AI
Intent recognition
KBQA
Knowledge based systems
Large language models
Linguistics
LLM
Semantics
Vectors
Title LB-KBQA:Large-language-model and BERT based Knowledge-Based Question and Answering System
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