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Evaluation on Network Social Media Named Entity Recognition Model Based on Active Learning

Published: 07 August 2024 Publication History

Abstract

The medical security privacy and named entity recognition (NER) technology under the blockchain technology has been a hot topic in all walks of life. As a typical representative of medical security risks and NER, the NER model of online social media based on active learning has attracted worldwide attention. NER is an important part of natural language processing. Traditional recognition technology usually requires a lot of external information, and through the manual identification of its features, which costs a lot of time and energy. In order to solve the shortcomings of traditional recognition algorithms and the lack of feature extraction in network media NER, a new active learning model was introduced in this paper. In the information age, people are increasingly demanding a large amount of text information, and NER technology came into being. Its main function is to accurately identify important information from text and provide useful information for high-level work. The initial design of NER system is mainly based on the recognition of rules, so as to realize the recognition of named entities. However, in a complex network environment, it takes a lot of time and energy to establish rules without conflicts, and it has poor mobility. In recent years, with the continuous development of computer technology, the use of machine learning to actively learn the unknown information in the target area reduces the workload of manual annotation, thus realizing the active learning of large amounts of data. The research showed that the recognition accuracy under the traditional NER was low, and the information processing speed was slow; the accuracy rate of NER based on active learning was as high as 97%, and the speed of information processing had also been greatly improved, which had solved many problems under the traditional mode. User satisfaction could be as high as 95%, which showed that the latter had broad prospects. The progress of the new era cannot be separated from the support of new technologies. The research of this article has important guiding significance for medical security privacy and the application of NER under blockchain technology.

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Published In

cover image ACM Transactions on Asian and Low-Resource Language Information Processing
ACM Transactions on Asian and Low-Resource Language Information Processing  Volume 23, Issue 8
August 2024
343 pages
EISSN:2375-4702
DOI:10.1145/3613611
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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 07 August 2024
Online AM: 05 September 2023
Accepted: 17 May 2023
Revised: 27 April 2023
Received: 20 February 2023
Published in TALLIP Volume 23, Issue 8

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Author Tags

  1. Active learning
  2. online social media
  3. named entity recognition
  4. blockchain technology
  5. medical security privacy

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  • 2021 scientific research project of Software Engineering Institute of Guangzhou

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