Applied Mathematics and Nonlinear Sciences (Jan 2023)

Path construction of public management model based on POI social computing

  • Wen Shujian

DOI
https://doi.org/10.2478/amns.2023.1.00028
Journal volume & issue
Vol. 8, no. 1
pp. 3159 – 3174

Abstract

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In order to be able to better manage the production and life of urban residents, it is necessary to continuously optimize the public management model, and this paper proposes the establishment of a public management path for POI social computing. Build a computing system that can communicate with multiple computing units so that public management generation and dissemination moves to the system boundary and users can communicate, share and collaborate using a variety of methods. Taking full advantage of the complete confidence of POI point data location attributes and timely data update, puGAN model is added to improve the integrity of the collected data and distinguish the data sources by learning the differences between real and pseudo samples. Generate data discriminative classification of real unlabeled samples with unlabeled samples, adjust the distribution characteristics of the learned sample data, and improve the discriminative ability. The gradient value of the sample discriminator is calculated, and the gradient generator is updated to learn according to the data classification and finally solve the public management variance features. The analysis results show that the puGAN model can improve the accuracy of POI localization, and the training error and testing error are maintained at about 15%, which provides an important role for public management model research.

Keywords