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Using Web Mining in the Analysis of Housing Prices: A Case study of Tehran

机译:在房价分析中使用网络挖掘:以德黑兰为例

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There have been many previous works to determine the determinants of housing prices. All of these works relied on a relatively small set of data, mostly collected with the help of real estate agencies. In this work, we used web mining methods to generate a big, organized dataset from a popular national brokerage website. The dataset contains structural characteristics of more than 139,000 apartments, alongside their location and price. We provided our full dataset for the article, so that other researchers can reproduce our results or conduct further analyses. Using this dataset, we analyzed housing prices of Tehran in order to identify its major determinants. To this aim, we examine the dynamics of housing prices at the district levels of Tehran using Hedonic Price model. Our results highlight a number of points, including: Base area of an apartment is positively correlated with price per square meter (r=0.89), showing a two-folded impact on the overall price. Air quality is in a positive, and floor level is in negative correlation with housing prices.
机译:以前有很多工作来确定房价的决定因素。所有这些工作都依赖于相对较小的数据集,这些数据大部分是在房地产中介的帮助下收集的。在这项工作中,我们使用网络挖掘方法从一个受欢迎的国家经纪网站生成了一个大型的,有组织的数据集。该数据集包含超过139,000套公寓的结构特征,以及它们的位置和价格。我们提供了文章的完整数据集,以便其他研究人员可以重现我们的结果或进行进一步的分析。使用此数据集,我们分析了德黑兰的房价,以确定其主要决定因素。为此,我们使用享乐价格模型研究了德黑兰地区一级的房价动态。我们的结果强调了以下几点:•公寓的基础面积与每平方米价格成正相关(r = 0.89),显示出对整体价格的双重影响。空气质量与房屋价格呈正相关,而地板水平与房屋价格呈负相关。

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