House Price Prediction Model Using Bridge Memristors Recurrent Neural Network

Wenzhao Shi
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Abstract

In recent decay, the house price prediction plays important role because of it's the volatile of house price which makes significant impact on property valuation and economic growth. It characterizes are attracted the numerous researchers, businessman and people who buy or sell house towards it. The volatile of house price is occurred based on various factors like location, facility, neighborhood, etc. In this way, researchers are evaluating the factors using machine and deep learning process to analysis the information. Although, regression-based analysis has problem due to its nonlinear and linear information in neural network. Thus, we have proposed a novel Bridge Memristors Recurrent Neural Network to forecast the house price prediction in this paper. In addition, RBP algorithm is used on Bridge Memristors RNN for train the neural network in efficient manner. Besides, our proposed model carried out outstanding performance than existing models to attain the high prediction rate by analyzing the correlation coefficient.
基于桥式忆阻器递归神经网络的房价预测模型
在最近的衰退中,房价预测扮演着重要的角色,因为房价的波动性对房地产估值和经济增长产生重大影响。它的特点吸引了众多的研究人员、商人和买卖房屋的人。房价的波动是根据地理位置、设施、邻里等多种因素而发生的。通过这种方式,研究人员正在使用机器和深度学习过程来评估因素,以分析信息。然而,由于神经网络的非线性和线性信息,基于回归的分析存在问题。因此,本文提出了一种新的桥式忆阻器递归神经网络来预测房价。此外,将RBP算法应用于桥式忆阻器RNN,有效地训练神经网络。此外,通过对相关系数的分析,我们提出的模型在预测准确率方面比现有模型表现突出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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