Analisis Perbandingan Metode Regresi Linier, Random Forest Regression dan Gradient Boosted Trees Regression Method untuk Prediksi Harga Rumah

E. Fitri
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Abstract

The need for a place to live is one that many people prepare, both millennials and adults and the elderly. With the continued increase in population growth in Indonesia and increasing public interest in buying a place to live early on, this can make not all groups of people have a place to live or a house that is quite livable. Related to this, the public needs up-to-date information related to predictions of house prices both for housing and second-hand housing prices for planning purposes in the future. The purpose of this study is to carry out a comparative analysis of the prediction results of house prices with several Machine Learning algorithms consist of Linear Regression, Random Forest Regression and Gradient Boosted Trees Regression. Evaluation for all the method applying Cross-Validation. The evaluation is seen from the smallest Root Mean Square Error (RMSE) error rate of each testing method. The results of this study are the Random Forest Regression obtained an RMSE value of 0.440, the Linear Regression model obtained an RMSE value of 0.515 and the RMSE value of Gradient Boosted Trees Regression of 0.508. The results were obtained from testing a dataset of 2011 records with a division of 80% for data training and 20% for data testing, the data has 6 attributes used in testing including house prices, land area, building area, number of bathrooms, number of bedrooms and the number of garages. In this study, prediction results using the Random Forest Regression method yielded the highest accuracy of 81.5% compared to the Linear Regression and Gradient Boosted Trees Regression methods.
很多人,包括千禧一代、成年人和老年人,都已经做好了找地方住的准备。随着印度尼西亚人口的持续增长,以及公众对早期购买住房的兴趣日益浓厚,这可能会使并非所有人群都有地方居住或拥有相当宜居的房子。与此相关,市民需要最新的房价预测信息,无论是住宅价格还是二手房价格,以便在未来进行规划。本研究的目的是对几种机器学习算法(线性回归、随机森林回归和梯度增强树回归)对房价的预测结果进行比较分析。应用交叉验证对所有方法进行评估。从各检验方法的最小均方根误差(RMSE)错误率来看其评价。本研究的结果是随机森林回归得到的RMSE值为0.440,线性回归模型得到的RMSE值为0.515,梯度提升树回归的RMSE值为0.508。结果是通过对2011条记录的数据集进行测试得到的,其中80%用于数据训练,20%用于数据测试,该数据有6个属性用于测试,包括房价、土地面积、建筑面积、浴室数量、卧室数量和车库数量。在本研究中,与线性回归和梯度增强树回归方法相比,随机森林回归方法的预测结果准确率最高,为81.5%。
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