利用大数据开发管理决策自动化智能系统

Q3 Mathematics
Akishev Karshyga, Amandos Tulegulov, Aslan Kalkenov, Kapar Aryngazin, Zhadira Nurtai, Dastan Yergaliyev, Manas Yergesh, Ainura Jumagaliyeva
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引用次数: 0

摘要

研究对象是哈萨克斯坦共和国的汽车工业。研究对象是评估汽车经销商潜在客户消费能力的决策过程管理,即预测汽车定价的过程。提出了一种使用全球搜索引擎优化算法的方法,即采用贝叶斯优化(RFBO)随机森林模型的森林输送线。该方法的算法如下:- 考虑到不确定性程度,获取并处理初始数据; - 形成优化向量; - 创建后代向量; - 按降序排列向量; - 降低特征空间维度; - 知识库训练。在本文中,来自 www.m.Kolesa.kz、www.Cars.com 和哈萨克斯坦共和国工资中位数平均值网站的数据被用于创建知识库,该平台的程序代码使用 Python 语言的 Visual Studio 代码创建。要解决的任务是预测汽车价格和评估潜在汽车经销商客户的消费能力。我们通过分析多个汽车分类网站和潜在客户的数据集来评估我们的解决方案。结果表明,模型训练的准确率为 92.1%,预测汽车价格和评估潜在客户消费能力的准确率为 87.3%--这主要归功于在使用同一组输入数据时,预测误差低于估计回归因子的预测误差、高质量的对象映射和更具竞争力的 RFBO 算法,优于简单的线性模型。开发的软件解决方案可用于汽车经销商和信贷机构的自动化管理决策
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an intelligent system automating managerial decision-making using big data
The object of the study is the automotive industry of the Republic of Kazakhstan. The subject of the study is the management of the decision-making process in assessing the consumer capabilities of potential customers of car dealerships, the process of forecasting car pricing. A method using a global search engine optimization algorithm, a forest conveyor line with a random forest model with Bayesian optimization (RFBO), is proposed. The algorithm of the method is as follows: – obtaining and processing initial data taking into account the degree of uncertainty; – formation of the optimization vector; – creation of descendant vectors; – ordering of vectors in descending order; – reducing the dimension of the feature space; – knowledge base training. In the presented work, data from websites www.m.Kolesa.kz, www.Cars.com and the average values of the median salary in the Republic of Kazakhstan were used to create a knowledge base, the program code of the platform was created using the Visual Studio Code in the Python language. The task to be solved was to predict car prices and assess the consumer capabilities of potential car dealership customers. We evaluate our solution based on a dataset that was created by analyzing several car classified sites and data on potential customers. Our results show that the accuracy of the model training was 92.1 %, and the accuracy of forecasting car prices and evaluating the consumer capabilities of potential customers was 87.3 % – this is primarily due to lower prediction errors than those of the estimated regressors using the same set of input data, high-quality object mapping and a more competitive RFBO algorithm, superior to simple linear models. The developed software solution should be used for making automated management decisions by car dealerships and credit organizations
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来源期刊
Eastern-European Journal of Enterprise Technologies
Eastern-European Journal of Enterprise Technologies Mathematics-Applied Mathematics
CiteScore
2.00
自引率
0.00%
发文量
369
审稿时长
6 weeks
期刊介绍: Terminology used in the title of the "East European Journal of Enterprise Technologies" - "enterprise technologies" should be read as "industrial technologies". "Eastern-European Journal of Enterprise Technologies" publishes all those best ideas from the science, which can be introduced in the industry. Since, obtaining the high-quality, competitive industrial products is based on introducing high technologies from various independent spheres of scientific researches, but united by a common end result - a finished high-technology product. Among these scientific spheres, there are engineering, power engineering and energy saving, technologies of inorganic and organic substances and materials science, information technologies and control systems. Publishing scientific papers in these directions are the main development "vectors" of the "Eastern-European Journal of Enterprise Technologies". Since, these are those directions of scientific researches, the results of which can be directly used in modern industrial production: space and aircraft industry, instrument-making industry, mechanical engineering, power engineering, chemical industry and metallurgy.
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