乌克兰住宅物业市场演变模型的不同方法比较分析及其 2019-2024 年预测

V. Yakubovsky, Kateryna Zhuk
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引用次数: 0

摘要

目的 本研究旨在全面分析住宅物业市场演变建模的各种方法,并研究近年来影响乌克兰住宅物业市场发展的宏观经济基本要素。构建了多因素线性回归(MLR)和脊回归(RR)模型,以确定多个预测因素对公寓价格的影响。此外,ARIMAX 模型整合了时间序列分析和外部因素,以提高建模和预测的准确性。混合 ARIMAX 模型通过将外部指标与时间序列分析相结合,进一步提高了预测性能。这些发现强调了多维方法在捕捉住房价格动态复杂性方面的有效性。 原创性/价值 本研究以乌克兰动荡的房地产市场中的房地产价格预测为特定背景,对多元线性回归、RR 和 ARIMAX 模型进行了分析,为房地产建模和预测文献做出了贡献。这项综合分析不仅深入揭示了这些方法的性能,而且还探讨了它们在以不断变化的动态(包括外部地缘政治因素的重大影响)为特征的市场中的适应性和稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative analysis of different approaches to the Ukrainian residential property market evolution modelling and its forecast for the years 2019–2024
Purpose This study aims to provide a comprehensive analysis of various approaches to the residential property market evolution modelling and to examine the macroeconomic fundamentals that have shaped this market development in Ukraine in recent years. Design/methodology/approach The study uses a comprehensive data set encompassing relevant macroeconomic indicators and historical apartment prices. Multifactor linear regression (MLR) and ridge regression (RR) models are constructed to identify the impact of multiple predictors on apartment prices. Additionally, the ARIMAX model integrates time series analysis and external factors to enhance modelling and forecasting accuracy. Findings The investigation reveals that MLR and RR yield accurate predictions by considering a range of influential variables. The hybrid ARIMAX model further enhances predictive performance by fusing external indicators with time series analysis. These findings underscore the effectiveness of a multidimensional approach in capturing the complexity of housing price dynamics. Originality/value This research contributes to the real estate modelling and forecasting literature by providing an analysis of multiple linear regression, RR and ARIMAX models within the specific context of property price prediction in the turbulent Ukrainian real estate market. This comprehensive analysis not only offers insights into the performance of these methodologies but also explores their adaptability and robustness in a market characterized by evolving dynamics, including the significant influence of external geopolitical factors.
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