Reviewing the Effects of Spatial Features on Price Prediction for Real Estate Market: Istanbul Case

Mert İlhan Ecevit, Z. Erdem, H. Dağ
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Abstract

In the real estate market, spatial features play a crucial role in determining property appraisals and prices. When spatial features are considered, classification techniques have been rarely studied compared to regression, which is commonly used for price prediction. This study reviews spatial features' effects on predicting the house price ranges for real estate in Istanbul, Turkey, in the classification context. Spatial features are generated and extracted by geocoding the address information from the original data set. This geocoding and feature extraction is another challenge in this research. The experiments compare the performance of Decision Trees (DT), Random Forests (RF), and Logistic Regression (LR) classifier models on the data set with and without spatial features. The prediction models are evaluated based on classification metrics such as accuracy, precision, recall, and F1-Score. We additionally examine the ROC curve of each classifier. The test results show that the RF model outperforms the DT and LR models. It is observed that spatial features, when incorporated with non-spatial features, significantly improve the prediction performance of the models for the house price ranges. It is considered that the results can contribute to making decisions more accurately for the appraisal in the real estate industry.
空间特征对房地产市场价格预测的影响:伊斯坦布尔案例
在房地产市场中,空间特征在决定房地产评估和价格方面起着至关重要的作用。当考虑空间特征时,与通常用于价格预测的回归相比,分类技术的研究很少。本研究回顾了在分类背景下,空间特征对土耳其伊斯坦布尔房地产价格区间预测的影响。通过对原始数据集的地址信息进行地理编码,生成并提取空间特征。地理编码和特征提取是本研究的另一个难点。实验比较了决策树(DT)、随机森林(RF)和逻辑回归(LR)分类器模型在具有和不具有空间特征的数据集上的性能。预测模型的评估基于分类指标,如准确性、精密度、召回率和F1-Score。我们还检查了每个分类器的ROC曲线。测试结果表明,射频模型优于DT和LR模型。研究发现,空间特征与非空间特征结合后,可以显著提高模型对房价区间的预测效果。研究结果可以为房地产行业的评估决策提供更准确的依据。
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