Abstract

In the human resource system of modern enterprises, human-post matching big data occupies an important irreplaceable position. With the deepening of the reform of state-owned enterprises, some shortcomings of human-post matching big data have become prominent. The purpose of this article is to solve the current state-owned enterprises. There are a variety of problems with big data in the enterprise, and an effective method is found that can accurately evaluate the degree of human-job matching in state-owned enterprises and provide a scientific basis for the manager of talent and resource allocation to make more rational decisions. Through the radial basis function (RBF) neural network-based big data model of human-post matching evaluation of state-owned enterprises, we scientifically and effectively evaluate the matching degree of the quality and ability of the personnel with the relevant requirements of the position and then help the company to adjust the personnel at any time changes in positions to maximize the efficiency of human resources. In this paper, considering the actual situation of the enterprise, the RBF neural network and the analytic hierarchy process (AHP) method are used comprehensively. Firstly, the AHP is used to obtain the weight of each evaluation index in the human-post matching index system. At the same time, the artificial neural network theory is self-adapting. Learning is helpful to solve the problem that the AHP method is too subjective. The two learn from each other's strong points and combine their weaknesses organically to increase the convenience and effectiveness of evaluation.

Highlights

  • Reasonable matching of personnel and positions requires one-to-one correspondence between people’s knowledge, experience, and abilities and job requirements

  • Reasonable matching of human resource big data is the main factor for continuous optimization of human resource management [1]

  • Some state-owned enterprises have found an irreplaceable position in human resource management and development, in recent years, they have adopted a variety of methods to attract and retain talents to promote the progress of the company [5]

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Summary

Ye Wu and Xiaowen Sun

With the deepening of the reform of state-owned enterprises, some shortcomings of human-post matching big data have become prominent. Ere are a variety of problems with big data in the enterprise, and an effective method is found that can accurately evaluate the degree of human-job matching in stateowned enterprises and provide a scientific basis for the manager of talent and resource allocation to make more rational decisions. Rough the radial basis function (RBF) neural network-based big data model of human-post matching evaluation of state-owned enterprises, we scientifically and effectively evaluate the matching degree of the quality and ability of the personnel with the relevant requirements of the position and help the company to adjust the personnel at any time changes in positions to maximize the efficiency of human resources.

Introduction
Related Work
RBF network
Data point
Optimized solution
Resource information volume
Sampling point
Training times
Findings
Output value
Full Text
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