Real Estate Price Prediction using Supervised Learning

Vedang Matey, Nikita Chauhan, Aditi Mahale, Vidya Bhistannavar, Ajitkumar Shitole
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Abstract

The least transparent sector of our economy is real estate. Housing prices change daily and are occasionally inflated rather than based on an appraisal. The central focus of our approach is using fundamental factors to forecast house values. Here, we strive to establish our assessments on each essential aspect when deciding the house's price. In our project, three elements affect a house's price: its physical attributes, design, and location. There have been a lot of studies utilizing typical machine learning techniques to estimate house prices effectively. Still, they need to pay more attention to how well each model performs and ignore the less well-known but more sophisticated models. Our project involves predictions using different Regression techniques like Linear Regression, Lasso Regression, and Decision Tree. Our project includes estimating the price of houses without any expectations of market prices and cost increments. The project aims to predict residential prices for customers considering their financial plans and needs. This project means to predict house prices in Pune city with various regression techniques. The project aims to predict cogent housing prices for those who do not own homes depending on their financial capabilities and desires. Estimating pricing will be possible by examining the mentioned goods, fare ranges, and advancements. This initiative aims to enable individuals to pinpoint the specific timeline for home acquisition and sellers in assessing the cost of a home sale. Spending resources on web-based apps without consulting a broker will benefit clients. Additionally, it provides a brief explanation of the various graphical and numerical techniques that are required to calculate the price of a home. Our study explains the goal of machine learning, the workings of the house pricing model, and the datasets that went into developing the model we suggest. Lasso, Decision Tree, and Linear Regression were among the models looked at in the study (accuracy: 83.54 percent) (accuracy -77.88 percent).
基于监督学习的房地产价格预测
我们经济中最不透明的部门是房地产。房价每天都在变化,偶尔会被夸大,而不是基于评估。我们方法的中心焦点是使用基本因素来预测房屋价值。在这里,我们努力在决定房子的价格时建立我们对每个重要方面的评估。在我们的项目中,有三个因素影响房子的价格:它的物理属性、设计和位置。有很多研究利用典型的机器学习技术来有效地估计房价。不过,他们需要更多地关注每个模型的表现,而忽略那些不太知名但更复杂的模型。我们的项目涉及使用不同回归技术的预测,如线性回归、套索回归和决策树。我们的项目包括在没有任何市场价格和成本增量预期的情况下估算房屋价格。该项目旨在根据客户的财务计划和需求预测住宅价格。这个项目是指用各种回归技术预测浦那市的房价。该项目旨在根据经济能力和意愿,为没有住房的人预测合理的房价。通过检查提到的商品、票价范围和进度,可以估计价格。这一举措旨在使个人能够准确地确定房屋收购和卖方评估房屋销售成本的具体时间表。在不咨询经纪人的情况下,将资源花费在基于web的应用程序上,将使客户受益。此外,它还提供了计算房屋价格所需的各种图形和数字技术的简要解释。我们的研究解释了机器学习的目标,房屋定价模型的工作原理,以及用于开发我们建议的模型的数据集。Lasso,决策树和线性回归是研究中观察的模型(准确率:83.54%)(准确率- 77.88%)。
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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