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Role of Artificial Intelligence Machine Learning in Deepening the Internet Plus Social Work Service

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  • Hexiao Yin

Abstract

The traditional social work services are mainly visits which have some problems such as inconvenient information circulation, unreasonable resource allocation, and low service efficiency. To improve these problems, Internet plus is used to reform social work services and form an Internet plus social work service mode. Although this model has a very good improvement effect on social work service, with the rapid increase of the number of social work services and the rapid growth of the number of volunteers, this model has limitations in the arrangement of social work services and volunteer management. Therefore, based on this model, with the help of machine learning, the Internet plus social work service mode can be deepened by using machine learning to manage social services and volunteers. Internet plus social work service is the main problem in this paper. The Internet plus social work service mode is formed. Then, the deepening role of machine learning in Internet + social work service is discussed, and some problems in Internet plus social work service mode are improved. Internet plus social work service mode can better improve the problems in traditional social work service. The paper also uses machine learning to further optimize the mode of Internet plus social work service, which has a good application in social work service prospects.

Suggested Citation

  • Hexiao Yin, 2021. "Role of Artificial Intelligence Machine Learning in Deepening the Internet Plus Social Work Service," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-10, November.
  • Handle: RePEc:hin:jnlmpe:6915568
    DOI: 10.1155/2021/6915568
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