Affiliation:
1. 1 Department of Social Work , Formerly the Ministry of Civil Affairs Management Cadre Institute, Beijing College of Social Administration , Beijing , , China
Abstract
Abstract
Analyzing the economic benefits of enterprise employees is better for protecting the rights and interests of enterprise employees. In this paper, based on the K-means clustering algorithm in the context of the Internet, the K-means clustering algorithm is optimized by the entropy weight method, and a K-means clustering model for exploring the analysis of the economic benefits of enterprise employees’ labor is proposed. For the model of this paper, the classification accuracy of the model is verified by employing controlled experiments, and two types of evaluation indexes for the labor economic efficiency of enterprise employees are analyzed and mined, namely labor employment and work environment and wage compensation and training and learning, using enterprise T as an example. Regarding labor and work environment indicators, 74.52% of the evaluations were above C grade. From the data of the indicators of salary and compensation and training and learning, the percentage of C grades or above is 89.41%. In the background of the Internet, the K-means algorithm model to analyze the relationship between the economic benefits of enterprise employee labor can help enterprises understand the current problems of employee labor and improve the happiness of employee labor, thus promoting the increase of enterprise economic benefits.
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
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