基于集成学习算法的房价预测分析

Sai Venkat Boyapati, Maddirala Sai Karthik, K. Subrahmanyam, B. Reddy
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摘要

在繁荣的文明和不断变化的市场需求之后,理解市场的漂移是非常重要的。这项研究的主要目的是根据目前的情况预测房价。从房地产市场的历史数据中,文献试图得出有用的见解。必须了解商业趋势,以便个人可以相应地准备他们的预算需求。一个不断扩张的社会是由不断增长的房地产行业推动的。很多客户都被代理人伪造的市场价格欺骗了。因此,近年来房地产行业变得不那么透明。之前的模型由于准确性下降和数据的过拟合而降低了效率,而新开发的模型解决了这些问题,并以更好的模型提供了丰富的用户界面。本研究的一个重要部分是开发一个对商业社会和个人都有益的广泛模型。这是本研究的主要目的。为了简化客户的现场工作,节省他的时间和金钱,这个软件旨在帮助他。机器学习算法使模型得到启发,如均方根误差、随机森林、支持向量机、k近邻、均方误差、极端梯度boost、平均绝对误差、r平方分数、线性回归、AdaBoost、CatBoost。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis of House Price Prediction Using Ensemble Learning Algorithms
It is very important to understand the market drifts in the wake of booming civilization and ever-changing market requirements. The principal purpose of the study is the prediction of house prices based on current conditions. From historical data on property markets, literature attempts to draw useful insights. Business trends must be understood so that individuals may prepare their budgetary needs accordingly. A society that is ever-expanding is driven by the growing real estate industry. A lot of clients have been duped by agents setting up a fake market rate. As a result, the real estate industry has become less transparent in recent years. Due to decreased accuracy and overfitting of data, the previous model reduced efficiency, whereas the newly developed model resolves such issues and provides a rich user interface with a better model. An important part of this study is to develop an extensive model that is beneficial to both business societies and individuals. This is the main objective of this study. In order to simplify the client’s fieldwork and free up his time and money, this software is intended to assist him. Machine learning algorithms enable models to be enlightened such as root mean square error, random forest, support vector machine, k-nearest neighbors, mean squared error, extreme gradient boost, mean absolute error, R-squared score, linear regression, AdaBoost, CatBoost.
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