Regression Neural Networks Advantage over Classical Regression Analysis
- 作者: Saltykova O.A.1, Saushkin V.D.1
-
隶属关系:
- RUDN University
- 期: 卷 26, 编号 3 (2025)
- 页面: 258-265
- 栏目: Articles
- URL: https://journal-vniispk.ru/2312-8143/article/view/350893
- DOI: https://doi.org/10.22363/2312-8143-2025-26-3-258-265
- EDN: https://elibrary.ru/WGHNEE
- ID: 350893
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详细
In this study, two analyzing methods are used to predict housing prices in California: neural network forecasting methods and methods based on regression analysis. Using the example of individual forecast indicators produced on the basis of two methods, the forecast results are compared. The purpose of this study is to show that the accuracy of prediction by neural networks is higher than that of the classical method. The assessment is carried out by creating a product in Python, which was chosen for reasons of ease of implementation of this analysis, ease of implementation of the product, as well as ease of constructing a graphical analysis of the results obtained. An open data source consisting of sixteen thousand items, which includes a number of housing criteria and prices based on these criteria, was used as resources for training the neural network. A broad review of studies comparing the predictive performance of artificial neural network-based methods and other forecasting methods is conducted. Much attention is paid to comparing artificial neural network methods and linear regression methods. Based on the results of this study, it was revealed that the accuracy of the neural network model is much higher when predicting results using linear regression methods, depending on the introduction of new forecasting criteria.
作者简介
Olga Saltykova
RUDN University
编辑信件的主要联系方式.
Email: saltykova-oa@rudn.ru
ORCID iD: 0000-0002-3880-6662
SPIN 代码: 3969-6707
PhD in Physical and Mathematical Sciences, Associate Professor of the Department of Mechanics and Control Processes, Academy of Engineering
6 Miklukho-Maklaya St, Moscow, 117198, Russian FederationVyacheslav Saushkin
RUDN University
Email: kingrailag@gmail.com
ORCID iD: 0009-0007-2812-184X
SPIN 代码: 1525-5653
Graduate student of the Department of Mechanics of Control Processes, Academy of Engineering
6 Miklukho-Maklaya St, Moscow, 117198, Russian Federation参考
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