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Enhancing Intelligent Property Valuation Models by Merging Similar Cadastral Regions of a Municipality

机译:通过合并一个城市的地籍地域来增强知识产权评估模型

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A method for enhancing property valuation models consists in determining zones of an urban municipality in which the prices of residential premises change similarly over time. Such similar zones are then merged into bigger areas embracing greater number of sales transactions which constitute a more reliable basis to construct accurate property valuation models. This is especially important when machine learning algorithms are employed do create prediction models. In this paper we present our further investigation of the method using the cadastral regions of a city as zones for merging. A series of evaluation experiments was conducted using real-world data comprising the records of sales and purchase transactions of residential premises accomplished in a Polish urban municipality. Six machine learning algorithms available in the WEKA data mining system were employed to generate property valuation models. The study showed that the prediction models created over the merged cadastral regions outperformed in terms of accuracy the models based on initial component regions.
机译:一种用于增强财产评估模型的方法包括确定市区的区域,在该区域中,住宅物业的价格会随着时间而类似地变化。然后,将这些类似的区域合并为更大的区域,包括更多的销售交易,这为构建准确的房地产评估模型提供了更可靠的基础。当采用机器学习算法创建预测模型时,这一点尤其重要。在本文中,我们对使用城市的地籍区域作为合并区域的方法进行了进一步的研究。使用真实数据进行了一系列评估实验,这些数据包括在波兰城市中完成的住宅房屋买卖交易的记录。使用WEKA数据挖掘系统中可用的六种机器学习算法来生成属性评估模型。研究表明,在合并地籍区域上创建的预测模型在准确性方面优于基于初始分量区域的模型。

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