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Main Authors: Peng, Xirui, Xu, Qiming, Feng, Zheng, Zhao, Haopeng, Tan, Lianghao, Zhou, Yan, Zhang, Zecheng, Gong, Chenwei, Zheng, Yingqiao
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.10492
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author Peng, Xirui
Xu, Qiming
Feng, Zheng
Zhao, Haopeng
Tan, Lianghao
Zhou, Yan
Zhang, Zecheng
Gong, Chenwei
Zheng, Yingqiao
author_facet Peng, Xirui
Xu, Qiming
Feng, Zheng
Zhao, Haopeng
Tan, Lianghao
Zhou, Yan
Zhang, Zecheng
Gong, Chenwei
Zheng, Yingqiao
contents This paper explores an automatic news generation and fact-checking system based on language processing, aimed at enhancing the efficiency and quality of news production while ensuring the authenticity and reliability of the news content. With the rapid development of Natural Language Processing (NLP) and deep learning technologies, automatic news generation systems are capable of extracting key information from massive data and generating well-structured, fluent news articles. Meanwhile, by integrating fact-checking technology, the system can effectively prevent the spread of false news and improve the accuracy and credibility of news. This study details the key technologies involved in automatic news generation and factchecking, including text generation, information extraction, and the application of knowledge graphs, and validates the effectiveness of these technologies through experiments. Additionally, the paper discusses the future development directions of automatic news generation and fact-checking systems, emphasizing the importance of further integration and innovation of technologies. The results show that with continuous technological optimization and practical application, these systems will play an increasingly important role in the future news industry, providing more efficient and reliable news services.
format Preprint
id arxiv_https___arxiv_org_abs_2405_10492
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automatic News Generation and Fact-Checking System Based on Language Processing
Peng, Xirui
Xu, Qiming
Feng, Zheng
Zhao, Haopeng
Tan, Lianghao
Zhou, Yan
Zhang, Zecheng
Gong, Chenwei
Zheng, Yingqiao
Computation and Language
Machine Learning
I.5; H.4
This paper explores an automatic news generation and fact-checking system based on language processing, aimed at enhancing the efficiency and quality of news production while ensuring the authenticity and reliability of the news content. With the rapid development of Natural Language Processing (NLP) and deep learning technologies, automatic news generation systems are capable of extracting key information from massive data and generating well-structured, fluent news articles. Meanwhile, by integrating fact-checking technology, the system can effectively prevent the spread of false news and improve the accuracy and credibility of news. This study details the key technologies involved in automatic news generation and factchecking, including text generation, information extraction, and the application of knowledge graphs, and validates the effectiveness of these technologies through experiments. Additionally, the paper discusses the future development directions of automatic news generation and fact-checking systems, emphasizing the importance of further integration and innovation of technologies. The results show that with continuous technological optimization and practical application, these systems will play an increasingly important role in the future news industry, providing more efficient and reliable news services.
title Automatic News Generation and Fact-Checking System Based on Language Processing
topic Computation and Language
Machine Learning
I.5; H.4
url https://arxiv.org/abs/2405.10492