伊斯坦布尔房地产市场价格预测模型

IF 0.6 Q4 BUSINESS, FINANCE
Mert Tekin, I. Sari
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引用次数: 1

摘要

摘要土耳其住房市场经历了价格的急剧上涨。个人和企业投资者现在拥有评估房地产评估的工具,同时使用传统技术使用少量数据。没有分析方法来评估房地产价格可能会导致投资者损失大量资金,尤其是在个人投资者的情况下。本研究旨在确定具有真实市场数据的不同机器学习算法如何改进这一过程。为了能够测试这一点,我们收集了超过30000行包含13个变量的住房市场数据。数据被净化、处理和可视化,同时根据CRISP-DM框架创建和比较预测模型,如线性回归、多项式回归、决策树、随机森林和XGboost。结果表明,使用复杂的技术创建机器学习模型可以提高预测房屋挂牌价格的准确性。本文旨在:分析使用真实且相对大量的数据的影响,确定有助于评估房地产的主要变量,比较不同的机器学习模型以找到适合房地产市场的最佳模型,创建一个准确的模型来预测伊斯坦布尔市场上任何房屋的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real Estate Market Price Prediction Model of Istanbul
Abstract The Turkish Housing Market has experienced a steep increase in prices. Individual and corporate investors now possess tools to estimate the real estate evaluation while using smaller amounts of data with traditional techniques. Not having an analytical approach to evaluate the price of real estate could cause the investor to lose considerable amounts of money, especially in the case of individual investors. This study aims to determine how different machine learning algorithms with real market data can improve this process. To be able to test this, over 30000 lines of housing market data with over 13 variables is scraped. Data is cleansed, manipulated and visualized, while predictive models such as linear regression, polynomial regression, decision trees, random forests, and XGboost are created and compared according to the CRISP-DM framework. The results show that using complex techniques to create machine learning models could improve the accuracy in predicting the listing prices of houses. This paper aims to: – analyze the effects of using a real and relatively large amount of data, – determine the main variables that contribute to the evaluation of an estate, – compare different machine learning models to find the optimal one for the real estate market, – create an accurate model to predict the value of any house on the Istanbul market.
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来源期刊
Real Estate Management and Valuation
Real Estate Management and Valuation Economics, Econometrics and Finance-Finance
CiteScore
1.50
自引率
25.00%
发文量
24
审稿时长
23 weeks
期刊介绍: Real Estate Management and Valuation (REMV) is a journal that publishes new theoretical and practical insights that improve our understanding in the field of real estate valuation, analysis and property management. The aim of the Polish Real Estate Scientific Society (Towarzystwo Naukowe Nieruchomości) is developing and disseminating knowledge about land management and the methods, techniques and principles of real estate valuation and the popularization of scientific achievements in this field, as well as their practical applications in the activities of economic entities.
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