Analysing the Factors Influencing the House Prices and Studying House Price Prediction Methods

Author:

Assudani Purushottam,Wankhede Chinmay

Abstract

Home buyers looking for a new house tend to be very cautious with their budgets and market strategies. Theyalways try to optimise the budget in such a way that it matches their requirements and needs. Therefore predictionof price becomes a very important thing when it comes to planning a budget and there is a need for a predictiontool. This can be achieved by doing data analysis notably Exploratory Data Analysis (EDA) and by developingMachine Learning models. An ideal home that a customer dreams of is something that matches as well as fulfils thecustomer’s requirements but at the same time with an appropriate budget. So instead of going to the real estateagent and paying an additional expense in the form of commission, the same work of suggesting and predictingthe price after analysing large data, is done by various machine learning models in a more efficient manner.Thus the research on house price prediction is of much significance as it caters to two stakeholders in this realestate market, home buyers will have a better understanding of property value and will be helped in the decisionmaking process and hence stand a better stand at negotiating. The other stakeholder i.e. the home seller will geta better estimate to put selling cost on property.

Publisher

Perpetual Innovation Media Pvt. Ltd.

Reference11 articles.

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5. Li, D., Liu, L., and Lv, H. 2021. Prediction of china’s housing price based on a novel grey seasonal model. Mathematical Problems in Engineering vol. 2021, 11 pages.

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