Information system based on multi-value classification of fully connected neural network for construction management

Q2 Decision Sciences
Tetyana Honcharenko, Roman Akselrod, Andrii Shpakov, Oleksandr Khomenko
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引用次数: 1

Abstract

This study is devoted to solving the problem to determine the professional adaptive capabilities of construction management staff using artificial intelligence systems. It is proposed fully connected feed-forward neural network (FCF-FNN) architecture and performed empirical modeling to create a data set. Model of artificial intelligence system allows evaluating the processes in an FCF-FNN during the execution of multi-value classification of professional areas. A method has been developed for the training process of a machine learning model, which reflects the internal connections between the components of an artificial intelligence system that allow it to “learn” from training data. To train the neural network, a data set of 35 input parameters and 29 output parameters was used; the amount of data in the set is 936 data lines. Neural network training occurred in the proportion of 10% and 90%, respectively. Results of this study research can be used to further improve the knowledge and skills necessary for successful professional realization.
基于多值分类全连接神经网络的施工管理信息系统
本研究致力于解决使用人工智能系统确定施工管理人员专业适应能力的问题。提出了全连接前馈神经网络(FCF-FNN)结构,并进行了经验建模,建立了数据集。人工智能系统模型允许在专业领域的多值分类执行过程中评估FCF-FNN中的过程。机器学习模型的训练过程已经开发出一种方法,它反映了人工智能系统组件之间的内部联系,使其能够从训练数据中“学习”。为了训练神经网络,使用了包含35个输入参数和29个输出参数的数据集;该集合的数据量为936条数据线。神经网络训练发生的比例分别为10%和90%。本研究的结果可用于进一步提高成功实现专业所需的知识和技能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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