Comparative Models of Price Estimation Using Multiple Linear Regression and Random Forest Methods

Denny Jean Crosss Sihombing, Desi C. Othernima, Jonson Manurung, J. Sagala
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Abstract

The house is one of the essential humans needs as a place to gather and do activities with family, and shelter, as well as a means of investment. The growth rate of people's demand for housing, especially houses in an area, is influenced by the rate of population growth in that area. Some regions in Indonesia with a reasonably high population growth rate are Jakarta, Bogor, Depok, Tangerang, and Bekasi (Jabodetabek). On the other hand, property entrepreneurs must be able to project house prices because businesses engaged in the property sector are currently very competitive. This study aims to model and compare several machine learning methods to estimate house prices in Jabodetabek based on facilities, year of construction, location, land and building area, number of rooms, condition of house construction, and legality documents. This modeling uses Multiple Linear Regression and Random Forest methods. The results of the modeling evaluation where the Random Forest model has an accuracy rate of 95.6%, while the Multiple Linear Regression model has an accuracy rate of 75%.
基于多元线性回归和随机森林方法的价格估算比较模型
房子是人类最基本的需求之一,它是家庭聚会和活动的场所,是住所,也是投资的手段。人们对住房需求的增长率,特别是一个地区的住房需求的增长率,受到该地区人口增长率的影响。印度尼西亚一些人口增长率较高的地区是雅加达、茂物、德波、丹格朗和勿加西(Jabodetabek)。另一方面,房地产企业家必须能够预测房价,因为从事房地产行业的企业目前竞争非常激烈。本研究旨在对几种机器学习方法进行建模和比较,以根据设施、建造年份、位置、土地和建筑面积、房间数量、房屋建造状况和合法性文件来估计Jabodetabek的房价。该模型采用多元线性回归和随机森林方法。其中随机森林模型的准确率为95.6%,而多元线性回归模型的准确率为75%。
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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