Linked Open Government Data to Predict and Explain House Prices: The Case of Scottish Statistics Portal

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Areti Karamanou, Evangelos Kalampokis, Konstantinos Tarabanis
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Abstract

Accurately estimating the prices of houses is important for various stakeholders including house owners, real estate agencies, government agencies, and policy-makers. Towards this end, traditional statistics and, only recently, advanced machine learning and artificial intelligence models are used. Open Government Data (OGD) have a huge potential especially when combined with AI technologies. OGD are often published as linked data to facilitate data integration and re-usability. EXplainable Artificial Intelligence (XAI) can be used by stakeholders to understand the decisions of a predictive model. This work creates a model that predicts house prices by applying machine learning on linked OGD. We present a case study that uses XGBoost, a powerful machine learning algorithm, and linked OGD from the official Scottish data portal to predict the probability the mean prices of houses in the various data zones of Scotland to be higher than the average price in Scotland. XAI is also used to globally and locally explain the decisions of the model. The created model has Receiver Operating Characteristic (ROC) AUC score 0.923 and Precision Recall Curve (PRC) AUC score 0.891. According to XAI, the variable that mostly affects the decisions of the model is Comparative Illness Factor, an indicator of health conditions. However, local explainability shows that the decisions made in some data zones may be mostly affected by other variables such as the percent of detached dwellings and employment deprived population.

链接开放政府数据预测和解释房价:苏格兰统计门户的案例
准确估计房价对于包括房主、房地产中介、政府机构和政策制定者在内的各种利益相关者都很重要。为此,传统的统计数据以及最近才开始使用的先进机器学习和人工智能模型得到了应用。开放政府数据(OGD)具有巨大的潜力,特别是与人工智能技术相结合时。OGD通常作为链接数据发布,以促进数据集成和可重用性。可解释的人工智能(XAI)可以被利益相关者用来理解预测模型的决策。这项工作创建了一个模型,通过在关联的OGD上应用机器学习来预测房价。我们提出了一个案例研究,使用XGBoost,一种强大的机器学习算法,并从苏格兰官方数据门户网站链接OGD来预测苏格兰各个数据区域的房屋平均价格高于苏格兰平均价格的概率。XAI还用于全局和局部解释模型的决策。该模型的Receiver Operating Characteristic (ROC) AUC得分为0.923,Precision Recall Curve (PRC) AUC得分为0.891。根据XAI的说法,影响模型决策的主要变量是比较疾病因子,这是健康状况的一个指标。然而,地方可解释性表明,在一些数据区做出的决定可能主要受到其他变量的影响,如独立住宅的百分比和失业人口。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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