预测住宅物业价格的集合方法

Renju K, Freni S
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摘要

如今,鉴于住房成本逐年增加,确定房产租金至关重要。我们的下一代需要一种简单明了的方法来预测未来的房产租金。影响房屋价格的因素有很多,包括房屋的实际状况、位置和大小。本研究利用网络刮擦技术从相关网站收集数据,用于分析和预测。研究采用集合策略预测班加罗尔的房屋租金。分析中集成了随机森林、XGBoost、支持向量回归(SVR)和决策树等机器学习算法的七个集合模型。目的是通过评估比较分析获得的性能分数来确定最佳模型。
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Ensemble Approach for Predicting The Price of Residential Property
Today, determining the rent for a property is crucial given that the cost of housing increases annually. Our future generation requires a straightforward method to forecast future property rent. Various factors influence the price of a house, including its physical condition, location, and size. This study utilizes web scraping techniques to collect data from pertinent websites for analytical and predictive purposes. Employing an ensemble strategy, the research predicts housing rents in Bangalore. Seven ensemble models of machine learning algorithms, such as Random Forest, XGBoost, Support Vector Regression (SVR), and Decision Trees, are integrated into the analysis. The objective was to determine the optimal model by evaluating their performance scores obtained from a comparative analysis. 
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