基于卷积神经网络的农业企业人力资源管理效益评价

IF 0.7 4区 农林科学 Q3 AGRICULTURE, MULTIDISCIPLINARY
Ning Zhang
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引用次数: 1

摘要

随着经济的快速发展,农业企业人力资源管理的绩效评价越来越受到重视。基于卷积神经网络理论,构建了农业企业人力资源管理效益评价体系,确定了综合效益结果的权重,进而得出评价水平。根据影响农业企业人力资源效益的主要因素,该模型设计了产能建设单井效益评价的投入产出指标,解决了农业企业人力管理信息化能力的测度问题。在仿真过程中,卷积神经网络设计了指标体系的评价指标。根据对系统安全的贡献和重要程度的不同,可以通过分配不同的权值来表达评价指标之间的差异。其次,对于多因素负荷相似或单一因素负荷较低的项目,采用该方法获得由54个项目组成的量表,其中人际技能子量表15个项目,学习发展子量表16个项目,成长驱动子量表23个项目。实验结果表明,卷积神经网络训练可以获得测试样本管理区域的合理规模值。模型预测效果评价指标显示,绝对相对误差、最大绝对相对误差和平均绝对相对误差均在5%以内,等式系数为0.9845,大于0.9,表明合理尺度的预测值与预期值拟合程度较高。该模型的预测结果较为理想,有效地提高了效益评价的准确性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Benefit evaluation of human resource management in agricultural enterprises based on convolutional neural network
With the rapid development of economy, the performance appraisal of human resource management in agricultural enterprises has gained more attention. Based on the convolutional neural network theory, this paper constructs the benefit evaluation system of human resource management in agricultural enterprises, determines the weight to obtain the comprehensive benefit result, and then obtains the evaluation level. According to the main factors affecting the human resource benefit of agricultural enterprises, the model designed the input and output indexes of the efficiency evaluation of single well of production capacity construction, and solved the problem of measuring the informatization ability of human resource management in agricultural enterprises. In the simulation process, the convolutional neural network designed the evaluation index of the index system. According to the different contribution and importance degree to the system security, the difference between the evaluation index can be expressed by assigning different weight values. Secondly, for items with similar loads on multiple factors or with low loads on a single factor, it was adopted to obtain a scale consisting of 54 items, including 15 items in interpersonal skills sub-scale, 16 items in learning development sub-scale and 23 items in growth driver sub-scale. The experimental results show that the convolutional neural network training can obtain the reasonable scale value of the test sample management area. The evaluation index of the model prediction effect shows that the absolute relative error, maximum absolute relative error and average absolute relative error are all within 5%, and the equality coefficient is 0.9845, which is greater than 0.9, indicating that the reasonable scale predicted value has a high degree of fitting with the expected value. The prediction results of the model are ideal, which effectively improves the accuracy of benefit evaluation
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来源期刊
Pakistan Journal of Agricultural Sciences
Pakistan Journal of Agricultural Sciences AGRICULTURE, MULTIDISCIPLINARY-
CiteScore
1.80
自引率
25.00%
发文量
18
审稿时长
6-12 weeks
期刊介绍: Pakistan Journal of Agricultural Sciences is published in English four times a year. The journal publishes original articles on all aspects of agriculture and allied fields.
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