Accounting School of Chongqing University of Technology, Chongqing University of Technology, ChongQing 400054, China.
Comput Intell Neurosci. 2022 Aug 9;2022:5904707. doi: 10.1155/2022/5904707. eCollection 2022.
With the continuous development of China's digital economy and the continuous heating of the real estate market, real estate tax base assessment occupies an important position in the real estate market. The purpose is to improve the work efficiency of relevant personnel of real estate tax base assessment, reduce workload pressure, and improve the evaluation level. Real estate tax base assessment and real estate appraisal are studied in detail, and the factors of the real estate tax base assessment index are analyzed. Different real estate tax base assessment methods are compared, and the difference and connection between different methods are explored. The theory of batch assessment of real estate tax base is analyzed in depth, and the procedures for batch assessment implementation are summarized. On this basis, a deep learning neural network (DLNN) theory is proposed, and a real estate tax base assessment model based on DLNN is constructed. The reliability, accuracy, and relative superiority of the model are analyzed in detail, and the model is used to test the sample data and analyze the error. The results reveal that the DLNN model has better data fit and good reliability. Compared with other algorithms, it has certain advantages and smaller error values. In the sample test, the test value is closer to the actual value, the error is controllable, and it has high accuracy. Through training, it shows that the DL model has an excellent performance in tax base assessment, can meet the requirements of efficient batch assessment, and is expected to achieve the goal of completing a huge workload in a limited time and improve work efficiency. The real estate tax base assessment model by DLNN can bring some help to the real estate finance and taxation work and provide a reference for the batch assessment of tax base in the real estate industry.
随着中国数字经济的不断发展和房地产市场的持续升温,房地产计税基础评估在房地产市场中占有重要地位。目的是提高相关人员的工作效率,降低工作量压力,提高评估水平。本文深入研究了房地产计税基础评估和房地产评估,分析了房地产计税基础评估指标的因素。比较了不同的房地产计税基础评估方法,探讨了不同方法之间的差异和联系。深入分析了房地产计税基础批量评估的理论,总结了批量评估实施的程序。在此基础上,提出了一种基于深度学习神经网络(DLNN)的房地产计税基础评估模型。详细分析了模型的可靠性、准确性和相对优越性,并使用模型对样本数据进行测试和分析误差。结果表明,DLNN 模型具有更好的数据拟合和良好的可靠性。与其他算法相比,它具有一定的优势和较小的误差值。在样本测试中,测试值更接近实际值,误差可控,具有较高的准确性。通过训练,表明 DL 模型在计税基础评估方面表现出色,能够满足高效批量评估的要求,有望在有限的时间内完成大量工作,提高工作效率。基于 DLNN 的房地产计税基础评估模型可以为房地产金融和税收工作带来一些帮助,并为房地产行业的计税基础批量评估提供参考。