Le, Dat, Rajasegarar, Sutharshan, Luo, Wei, Nguyen, Thanh Thi, Vo, Nhi, Nguyen, Quang and Angelova, Maia (2025). EGCN: Entropy-based graph convolutional network for anomalous pattern detection and forecasting in real estate markets. PLoS ONE, 20 (10),
Abstract
Real estate markets are inherently dynamic, influenced by economic fluctuations, policy changes and socio-demographic shifts, often leading to emergence of anomalous—regions, where market behavior significantly deviates from expected trends. Traditional forecasting models struggle to handle such anomalies, resulting in higher errors and reduced prediction stability. In order to address this challenge, we propose EGCN, a novel cluster-specific forecasting framework that first detects and clusters anomalous regions separately from normal regions, and then applies forecasting models. This structured approach enables predictive models to treat normal and anomalous regions independently, leading to enhanced market insights and improved forecasting accuracy. Our evaluations on the UK, USA, and Australian real estate market datasets demonstrates that the EGCN achieves the lowest error both anomaly-free (baseline) methods and alternative anomaly detection methods, across all forecasting horizons (12, 24, and 48 months). In terms of anomalous region detection, our EGCN identifies 182 anomalous regions in Australia, 117 in the UK and 34 in the US, significantly more than the other competing methods, indicating superior sensitivity to market deviations. By clustering anomalies separately, forecasting errors are reduced across all tested forecasting models. For instance, when applying Neural Hierarchical Interpolation for Time Series Forecasting, the EGCN improves accuracy across forecasting horizons. In short-term forecasts (12 months), it reduces MSE from 1.3 to 1.0 in the US, 9.7 to 6.4 in the UK and 2.0 to 1.7 in Australia. For mid-term forecasts (24 months), EGCN achieves the lowest errors, lowering MSE from 3.1 to 2.3 (US), 14.2 to 9.0 (UK), and 4.5 to 4.0 (Australia). Even in long-term forecasts (48 months), where error accumulation is common, EGCN remains stable; decreasing MASE from 6.9 to 5.3 (US), 12.2 to 8.5 (UK), and 16.0 to 15.2 (Australia), highlighting its robustness over extended periods. These results highlight how separately clustering anomalies allows forecasting models to better capture distinct market behaviors, ensuring more precise and risk-adjusted predictions.
Publication DOI: | https://doi.org/10.1371/journal.pone.0334141 |
---|---|
Divisions: | College of Engineering & Physical Sciences > Aston Institute of Photonics Technology (AIPT) College of Engineering & Physical Sciences > Aston Digital Futures Institute |
Additional Information: | Copyright © 2025 Le et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. |
Publication ISSN: | 1932-6203 |
Data Access Statement: | The data underlying the results presented in the study were obtained from publicly available sources. Australian real estate data were obtained from Australian Property Monitors via AURIN (https://data.aurin.org.au/). Real estate data for the United States were sourced from Zillow (https://www.zillow.com/), and UK property transaction data were sourced from HM Land Registry (https://www.gov.uk/government/organisations/land-registry). Sentiment analysis data were derived from publicly available news headlines using a pre-trained RoBERTa model. All relevant processed data supporting the findings are within the manuscript. https://figshare.com/articles/dataset/EGCN_Entropy-based_Graph_Convolutional_Network_for_Anomalous_Pattern_Detection_and_Forecasting/29931260 |
Last Modified: | 20 Oct 2025 07:21 |
Date Deposited: | 17 Oct 2025 15:41 |
Full Text Link: | |
Related URLs: |
https://journal ... al.pone.0334141
(Publisher URL) |
PURE Output Type: | Article |
Published Date: | 2025-10-16 |
Published Online Date: | 2025-10-16 |
Accepted Date: | 2025-09-23 |
Authors: |
Le, Dat
Rajasegarar, Sutharshan Luo, Wei Nguyen, Thanh Thi ( ![]() Vo, Nhi Nguyen, Quang Angelova, Maia ( ![]() |