利用稳健享乐回归实现的研究

IF 0.7 Q2 MATHEMATICS
Serdar Cihat Gören, O. Arslan
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引用次数: 0

摘要

本文旨在通过特征回归模型确定影响产品价格的特征,并通过稳健回归估计方法估计每个特征对价格的贡献。为了进行分析,使用网络抓取方法从大数据源中获取笔记本电脑产品组的价格和功能信息。特征回归模型的四种替代方案用于确定影响笔记本电脑价格的特征。通过使用鲁棒(Huber M-估计器)估计方法和普通最小二乘(OLS)估计方法来估计每个特征对笔记本电脑价格的贡献,并比较这两种方法的估计结果。在研究中使用的数据集框架中,观察到有效的模型是对数鲁棒Hedonic回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study on using robust hedonic regression implementation
This article aims to determine the features affecting the price of a product with the hedonic regression model and to estimate the contribution of each feature to the price by using robust regression estimation methods. For the analysis, the price and feature information of the laptop product group were obtained from the big data source by using the web scraping method. Four alternatives of the hedonic regression model are used to determine the features affecting the price of the laptops. The contribution of each feature to the laptop price is estimated by using the robust (Huber M-estimator) estimation method and the Ordinary Least Squares (OLS) estimation method, and the resulting estimates are compared for both methods. In the framework of the data set used in the study, it is observed that the effective model is the Logarithmic Robust Hedonic Regression Model.
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