Forecasting China's Real Estate Investment Trends: A Dynamic Regression Model Approach with ARIMA
DOI:
https://doi.org/10.54097/0mhxm634Keywords:
China real estate market, dynamic regression model, ARIMA model, housing investment trends.Abstract
This investigation utilizes a dynamic regression model with Autoregressive Integrated Moving Average (ARIMA) error correction to evaluate and forecast the trajectory of China's real estate market. The model interprets investment cycles, indicating an imminent significant peak and anticipates subsequent market adjustments. The research integrates key indicators such as production output and sales data to substantiate its predictions, simultaneously warning of an overinflated housing market due to shifting demands and demographic evolution. The authors argue for a more sophisticated modeling approach to accurately reflect the market's nuances and propose targeted policy measures aimed at maintaining equilibrium. The study presents the model's formidable forecasting ability while also acknowledging the complex, multifaceted nature of the real estate sector which mandates ongoing model enhancements. This dual focus on predictive accuracy and the call for adaptive modeling underscores the study's commitment to providing actionable insights in a rapidly changing economic landscape. The proposed policies seek to preemptively counteract instability, thereby contributing to a more sustainable real estate economy in China.
Downloads
References
Coffee J C. What Went Wrong? An Initial Inquiry into the Causes of the 2008 Financial Crisis. J. Corp. Law Stud., 2009, 9: 1 – 22.
Zhi T, Li Z, Jiang Z, Wei L, Sornette D. Is there a housing bubble in China? Emerg. Mark. Rev., 2019, 39: 120 – 132.
Hwang S. Dynamic Regression Models for Prediction of Construction Costs. J. Constr. Eng. Manag., 2009, 135: 360 – 367.
Wei Y, Cao Y. Forecasting house prices using dynamic model averaging approach: Evidence from China. Econ. Model., 2017, 61: 147 – 155.
Tajani F, Morano P, Saez-Perez M P, Di Liddo F, Locurcio M. Multivariate Dynamic Analysis and Forecasting Models of Future Property Bubbles: Empirical Applications to the Housing Markets of Spanish Metropolitan Cities. Sustainability, 2019, 11: 3575.
Muli N F. An Assessment of the Factors Affecting the Growth in Real Estate Investment in Kenya. Theory Soc., 2013, 1 - 66.
Neto M S. Analysis of the Determinants of New Housing Investment in Spain. Hous. Theory Soc., 2005, 22: 18 – 31.
Lastrapes W D. The Real Price of Housing and Money Supply Shocks: Time Series Evidence and Theoretical Simulations. J. Hous. Econ., 2002, 11: 40 – 74.
Hobijn B, Franses P H, Ooms M. Generalizations of the KPSS-test for stationarity. Stat. Neerlandica, 2004, 483 – 502.
Huang S, Shin S W, Wang R D. The Impact of Housing Price on the Performance of Listed Steel Companies Evidence in China. Asia-Pac. J. Bus., 2020, 11: 27 – 43.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Highlights in Science, Engineering and Technology

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.







