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Housing Price Prediction Using Machine Learning Algorithms: The Case of Melbourne City, Australia

机译:使用机器学习算法的房价预测:以澳大利亚墨尔本市为例

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House price forecasting is an important topic of real estate. The literature attempts to derive useful knowledge from historical data of property markets. Machine learning techniques are applied to analyze historical property transactions in Australia to discover useful models for house buyers and sellers. Revealed is the high discrepancy between house prices in the most expensive and most affordable suburbs in the city of Melbourne. Moreover, experiments demonstrate that the combination of Stepwise and Support Vector Machine that is based on mean squared error measurement is a competitive approach.
机译:房价预测是房地产的重要课题。文献试图从房地产市场的历史数据中获得有用的知识。机器学习技术被用于分析澳大利亚的历史房地产交易,以发现对房屋买卖双方有用的模型。揭露的是墨尔本市最昂贵和最负担得起的郊区的房价之间的高度差异。此外,实验证明基于均方误差测量的逐步和支持向量机的组合是一种竞争性方法。

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