Wang Jining, Ji Huabin, Wang Lei
School of Economics and Management, Nanjing Tech University, Nanjing, China.
PLoS One. 2025 May 7;20(5):e0322821. doi: 10.1371/journal.pone.0322821. eCollection 2025.
While the traditional genetic algorithms are capable of forecasting house prices, they often suffer from premature convergence, which adversely affects the reliability of the forecasts. To address this issue, the research employs a genetic-particle swarm optimization (GA-PSO) algorithm and develops a GA-PSO-BP neural network model through the integration of the BP neural network. Building upon this foundation, the study considers several pivotal factors affecting housing prices and employs a dataset comprising 1,824 transactions of second-hand homes from 2023 to 2024, gathered from Lianjia.com, to forecast housing prices in China. This work shows that the GA-PSO-BP neural network model demonstrates exceptional forecasting performance when dealing with complex and high-dimensional data, significantly minimizing forecasting errors. The test set achieved an RMSE of 0.786 and a MAPE of 8.9%. Its effectiveness in forecasting prices of second-hand houses notably surpasses that of a BP neural network model optimized by a single algorithm. This research provides more accurate forecasts of second-hand house prices in rapidly growing urban areas such as Guangzhou, thus providing essential insights for investors contemplating real estate investment.
虽然传统遗传算法能够预测房价,但它们常常遭受早熟收敛问题,这对预测的可靠性产生不利影响。为解决这一问题,该研究采用了遗传粒子群优化(GA - PSO)算法,并通过整合BP神经网络开发了GA - PSO - BP神经网络模型。在此基础上,该研究考虑了几个影响房价的关键因素,并使用了一个包含2023年至2024年来自链家网的1824笔二手房交易的数据集来预测中国的房价。这项工作表明,GA - PSO - BP神经网络模型在处理复杂和高维数据时表现出卓越的预测性能,显著减少了预测误差。测试集的均方根误差(RMSE)为0.786,平均绝对百分比误差(MAPE)为8.9%。其在预测二手房价格方面的有效性明显超过了单一算法优化的BP神经网络模型。该研究为广州等快速发展城市的二手房价格提供了更准确的预测,从而为考虑房地产投资的投资者提供了重要见解。