Land Price Prediction System Using Case-based Reasoning

Minkyu Choi, Taeha Yi, Meereh Kim, Ji-Hyun Lee
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Abstract

Real estate price prediction is very complex process. Big data and machine learning technology have been introduced in many research areas, and they are also making such an attempt in the real estate market. Although real estate price forecasting studies is actively conducted, using support vector machine, machine learning algorithm, AHP method, and so on, validity and accuracy are still not reliable.In this research, we propose a Case-Based Reasoning system using regression analysis to allocate weight of attributes. This proposed system can support to predict the real estate price based on collecting public data and easily update the knowledge about real estate. Since the result shows error rate less than 30% through the experiment, this algorithm gives better performance than previous one. By this research, it is possible for help decision-makers to expect the real estate price of interested area.
基于案例推理的地价预测系统
房地产价格预测是一个非常复杂的过程。大数据和机器学习技术已经被引入了很多研究领域,他们在房地产市场也在做这样的尝试。虽然房地产价格预测研究积极开展,采用支持向量机、机器学习算法、AHP方法等,但有效性和准确性仍然不可靠。在本研究中,我们提出了一个基于案例的推理系统,使用回归分析来分配属性的权重。该系统可以支持基于公共数据的房地产价格预测,并且可以方便地更新有关房地产的知识。实验结果表明,该算法的误差率小于30%,具有较好的性能。通过本研究,可以帮助决策者对感兴趣地区的房地产价格进行预测。
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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