Constructing a highly accurate price prediction model in real estate investment using LightGBM

Tianqi Li, T. Akiyama, Liang-Ying Wei
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Abstract

In this research, we propose a high-accuracy price prediction model for the purpose of constructing a support system for information collection and automatic analysis of profitable properties in the real estate investment market. In the traditional real estate investment process, investors needed to go through the following processes: 1) collect information on the Internet, 2) make price predictions based on their own judgement, 3) order, 4) negotiate and purchase. 1 and 2 in particular are inefficient because they seem simple, but are very time-consuming and must be repeated many times until a suitable property is found. Therefore, we aim to construct an efficient real estate investment support system by automating the information gathering process and substituting the price prediction process with a machine learning model. In this paper, we focus on the price prediction of part (2) and propose a highly accurate price prediction model using LightGBM. Specifically, the accuracy was improved by incorporating the condominium brand name, which is a price determining factor unique to Japan, and the Geo Data, a geographic factor, into the price prediction model.
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利用LightGBM构建房地产投资价格高精度预测模型
在本研究中,我们提出了一个高精度的价格预测模型,旨在为房地产投资市场中盈利物业的信息收集和自动分析构建一个支持系统。在传统的房地产投资过程中,投资者需要经历以下几个过程:1)在网上收集信息,2)根据自己的判断进行价格预测,3)订购,4)协商购买。特别是1和2是低效的,因为它们看起来很简单,但非常耗时,必须重复多次,直到找到合适的属性。因此,我们的目标是通过自动化信息收集过程,用机器学习模型代替价格预测过程,构建一个高效的房地产投资支持系统。本文以第(2)部分的价格预测为重点,利用LightGBM提出了一个高精度的价格预测模型。具体来说,通过将日本特有的价格决定因素公寓品牌名称和地理因素Geo Data纳入价格预测模型,提高了准确性。
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