Abstract

A question answering (QA) system based on natural language processing and deep learning is a prominent area and is being researched widely. The Long Short-Term Memory (LSTM) model that is a variety of Recurrent Neural Network (RNN) used to be popular in machine translation, and question answering system. However, that model still has certainly limited capabilities, so a new model named Bidirectional Encoder Representation from Transformer (BERT) emerged to solve these restrictions. BERT has more advanced features than LSTM and shows state-of-the-art results in many tasks, especially in multilingual question answering system over the past few years. Nevertheless, we tried applying multilingual BERT model for a Vietnamese QA system and found that BERT model still has certainly limitation in term of time and precision to return a Vietnamese answer. The purpose of this study is to propose a method that solved above restriction of multilingual BERT and applied for question answering system about tourism in Vietnam. Our method combined BERT and knowledge graph to enhance accurately and find quickly for an answer. We experimented our crafted QA data about Vietnam tourism on three models such as LSTM, BERT fine-tuned multilingual for QA (BERT for QA), and BERT+vnKG. As a result, our model outperformed two previous models in terms of accuracy and time. This research can also be applied to other fields such as finance, e-commerce, and so on.

Highlights

  • Question answering system using deep learning is a challenging field and has received a lot of attention in recent years

  • Many models have been applied for this system such as Long Short-Term Memory (LSTM), knowledge graph and Bidirectional Encoder Representation from Transformer (BERT), which are surveyed

  • We used combined model to improve the efficiency of the Vietnamese question answering system that can be applied in Vietnam tourism

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Summary

Introduction

Question answering system using deep learning is a challenging field and has received a lot of attention in recent years. Question answering system is highly applied in practice. Answering questions automatically helps investors make market price decisions, users can order products anytime, visitors can ask about tourism places, etc. The question answering system accepts a natural language input question and the returned result is a natural language answer in a specific field. Many models have been applied for this system such as LSTM, knowledge graph and BERT, which are surveyed . We used combined model to improve the efficiency of the Vietnamese question answering system that can be applied in Vietnam tourism

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