基于集合学习的出租公寓价格分类特征因子预测模型

Asif Ahmed Neloy, H. M. Sadman Haque, Md. Mahmud Ul Islam
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引用次数: 15

摘要

公寓租赁价格受到多种因素的影响。本研究的目的是分析公寓的不同特征,并基于多种因素预测其租金价格。为了实现这一目标,建立了一个基于集成学习的预测模型。我们使用了来自bProperty.com的数据集,其中包括孟加拉国达卡市公寓的租金价格和不同特征。结果显示了公寓租金的准确性和预测,也表明了影响机器学习模型的不同类型的分类值。研究的另一个目的是找出影响达卡公寓租赁价格的因素。为了帮助我们的预测,我们采用了先进的回归技术(ART),并比较了公寓的不同特征,以建立一个可接受的模型。以下算法被选择作为基本预测因子:高级线性回归,神经网络,随机森林,支持向量机(SVM)和决策树回归。集成学习由以下算法组成:集成AdaBoosting回归器、集成梯度增强回归器、集成XGBoost。此外,Ridge回归、Lasso回归和Elastic Net回归也被用来结合先进的回归技术。基于树的算法从“YES”和“NO”的分类值生成决策树,集成方法提高学习和预测精度,支持向量机扩展模型的分类和回归方法,最后推进线性回归来预测不同特征值的房价。
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Ensemble Learning Based Rental Apartment Price Prediction Model by Categorical Features Factoring
Apartment rental prices are influenced by various factors. The aim of this study is to analyze the different features of an apartment and predict the rental price of it based on multiple factors. An ensemble learning based prediction model is created to reach the goal. We have used a dataset from bProperty.com which includes the rental price and different features of apartments in the city of Dhaka, Bangladesh. The results show the accuracy and prediction of the rent of an apartment, also indicates the different types of categorical values that affect the machine learning models. Another purpose of the study is to find out the factors that signify the apartment rental price in Dhaka. To help our prediction we take on the Advance Regression Techniques (ART) and compare to different features of an apartment for establishing an acceptable model. The following algorithms are selected as the base predictors -- Advance Linear Regression, Neural Network, Random Forest, Support Vector Machine (SVM) and Decision Tree Regressor. The Ensemble learning is stacked of following algorithms -- Ensemble AdaBoosting Regressor, Ensemble Gradient Boosting Regressor, Ensemble XGBoost. Also, Ridge Regression, Lasso Regression, and Elastic Net Regression has been used to combine the advance regression techniques. Tree-based algorithms generate a decision tree from categorical 'YES' and 'NO' values, Ensemble methods to boosting up the learning and prediction accuracy, Support Vector Machine to extend the model for both classification and regression approach and lastly advance linear regression to predict the house price with different features values.
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