Stabilizing Geo-Spatial Splines with Helperpoints – How to Estimate Smooth Price Surfaces when there are Data Gaps

Norbert Pfeifer, Miriam Steurer
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Abstract

This paper examines how to overcome an essential disadvantage of polynomial spline behavior: over-shooting of estimated spline functions in areas with poor data support. We introduce a new method that avoids the spline overshooting problem by placing helper points in data-gap areas before estimating the spline surface. We estimate helper point values via the Random Forest algorithm. Helper points force the algorithm to put a cost on deviating from reasonable local values in these areas. We show that our method can prevent spline overshooting where data are missing, can improve predictions in areas where data are scarce, but does not distort the spline surface in areas where data are plentiful. Our method also has a positive knock-on e ff ect in that it reduces the need for high (global) penalisation values and thus improves the spline’s response to changes in actual prices in regions with more data. Our method is particularly suited to the estimation of property price gradients, as property data are inherently unevenly distributed in space. We illustrate that our method can significantly improve the estimation of regional house price gradients using data for new apartment transactions in Vienna, Austria. To the best of our knowledge, our method is new - not only to the field of Real Estate Economics - but also to the spline literature.
稳定地理空间样条与帮助点-如何估计平滑的价格表面时,有数据缺口
本文研究了如何克服多项式样条行为的本质缺点:在数据支持不足的区域估计样条函数的超调。在估计样条曲面之前,我们提出了一种新的方法,通过在数据间隙区域放置辅助点来避免样条曲面过冲问题。我们通过随机森林算法估计辅助点值。辅助点迫使算法在偏离这些区域的合理局部值时付出代价。我们表明,我们的方法可以防止数据缺失的样条过冲,可以在数据稀缺的区域改进预测,但在数据丰富的区域不会扭曲样条曲面。我们的方法还具有积极的连锁效应,因为它减少了对高(全球)惩罚值的需求,从而提高了样条对具有更多数据的地区实际价格变化的响应。我们的方法特别适用于房地产价格梯度的估计,因为房地产数据在空间上的分布本质上是不均匀的。我们使用奥地利维也纳新公寓交易的数据说明我们的方法可以显著改善区域房价梯度的估计。据我们所知,我们的方法是新的-不仅在房地产经济学领域-而且在样条文献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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