Analysis and Evaluation of Housing Price Factors Using Mathematical Modeling
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Keywords

Mathematical modeling
Regression analysis
Housing price
Formation factors
Multiple linear regression
Hypothesis testing
Multiple decision coefficients

DOI

10.26689/pbes.v7i6.9103

Submitted : 2024-11-23
Accepted : 2024-12-08
Published : 2024-12-23

Abstract

In recent years, the real estate industry has achieved significant progress, driving the development of related sectors and playing a crucial role in economic growth. However, rapid real estate market expansion has led to challenges, particularly concerning housing prices, which have drawn widespread societal attention. This article explores the theories of housing prices, analyzes factors influencing them, and conducts an empirical investigation of the impact of representative factors on ordinary residential prices. Using regression analysis and the entropy weight method, a mathematical model was developed to examine how various factors affect housing prices.

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