利用机器学习预测房价

Gangadharayya Vh, Abhishek Dc, Naveen Nb, Dr.Md.Irshad Hussain B
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引用次数: 0

摘要

预测房价是房地产经济学和社会科学领域的一个重要研究和应用领域。本研究利用包含房屋各种特征(如位置、大小、房龄和质量)的统计数据,创建了一种估算房价的方法。通过强大的数据处理、特征选择和建模技术,包括背景分析和机器学习算法,实现了准确的预测。结果表明,位置、规模和邻里特征等因素对房价有重大影响。此外,研究还表明,使用地理分析和经济分析等先进技术可以提高预测的准确性。研究结果强调了使用准确的统计数据和分析方法预测房价的重要性,为房地产投资、城市规划和政策制定等领域的利益相关者提供了有价值的信息。本回顾性报告重点总结了房价预测领域的研究方法、主要发现和结论。可根据特定研究的具体结果和方法进行调整 关键词:房价预测,机器学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
House Price Prediction Using Machine Learning
Predicting house prices is an important research and application area in the fields of real estate economics and social sciences. This study uses statistics that include various characteristics of houses, such as location, size, age and quality, to create a method for estimating house prices. Accurate predictions are achieved through powerful data processing, feature selection and modeling techniques, including background analysis and machine learning algorithms. The results show that factors such as location, size, and neighborhood characteristics have a significant impact on home prices. Additionally, research shows that advanced techniques such as geographic analysis and economic analysis are used to improve forecast accuracy. The findings underscore the importance of using accurate statistics and analytical methods to predict house prices, providing valuable information to stakeholders in real estate investment, urban planning and policy making. This retrospective focuses on summarizing the methodology, key findings and conclusions of research in the field of house price forecasting. Adjustments may be made based on the specific results and methods used in a particular study Keyword: House Price Prediction, Machine Learning.
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