House Price Prediction using Machine Learning Algorithm - The Case of Karachi City, Pakistan

Maida Ahtesham, N. Bawany, Kiran Fatima
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引用次数: 9

Abstract

House prices are a significant impression of the economy, and its value ranges are of great concerns for the clients and property dealers. Housing price escalate every year that eventually reinforced the need of strategy or technique that could predict house prices in future. There are certain factors that influence house prices including physical conditions, locations, number of bedrooms and others. Traditionally predictions are made on the basis of these factors. However such prediction methods require an appropriate knowledge and experience regarding this domain. Machine Learning techniques have been a significant source of advanced opportunities to analyze, predict and visualize housing prices. In this paper, Gradient Boosting Model XGBoost is utilized to predict housing prices. Publicly available dataset containing 38,961 records of Karachi city is attained from an Open Real Estate Portal of Pakistan. Lot of work has been done in predicting house prices across many countries, however very limited amount of work has been done for predicting house prices in Pakistan. Our proposed house price prediction model is able to predict 98% accuracy.
使用机器学习算法预测房价-以巴基斯坦卡拉奇市为例
房价是经济的一个重要标志,其价值范围是客户和房地产经纪人非常关注的问题。房价每年都在上涨,这最终加强了对预测未来房价的策略或技术的需求。有一些因素会影响房价,包括物理条件、位置、卧室数量等。传统上,预测是基于这些因素做出的。然而,这样的预测方法需要在这个领域有适当的知识和经验。机器学习技术已经成为分析、预测和可视化房价的重要机会来源。本文采用梯度提升模型XGBoost对房价进行预测。从巴基斯坦开放房地产门户网站获得了包含38,961条卡拉奇市记录的公开数据集。在预测许多国家的房价方面已经做了很多工作,但是在预测巴基斯坦的房价方面所做的工作非常有限。我们提出的房价预测模型预测准确率为98%。
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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