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Price evaluation model in second-hand car system based on BP neural network theory

机译:基于BP神经网络理论的二手车价格评估模型。

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With the rapid growth of the number of private cars and the development of the second-hand car market, second-hand cars have become the main choice when people buy cars. The online second-hand car platform provides both buyers and sellers the chance of online P2P trade. In such systems, the accuracy of second-hand car price evaluation largely determines whether the seller and the buyer can get more efficient trading experience. In this paper, the price evaluation model based on big data analysis is proposed, which takes advantage of widely circulated vehicle data and a large number of vehicle transaction data to analyze the price data for each type of vehicles by using the optimized BP neural network algorithm. It aims to establish a second-hand car price evaluation model to get the price that best matches the car. In this paper, the optimized BP neural network algorithm is used to select the optimal number of hidden neurons in BP neural network, which improves the convergence speed of the network topology and the accuracy of the prediction model. Through the sampling simulation experiments, the fitting curve of the prediction price is compared with the real transaction price derived from the optimized model. As a result, the fitting of the optimized model is better as well as the accuracy is higher.
机译:随着私家车数量的快速增长和二手车市场的发展,二手车已成为人们购车的主要选择。在线二手车平台为买卖双方提供了在线P2P交易的机会。在这样的系统中,二手车价格评估的准确性在很大程度上决定了买卖双方是否可以获得更有效的交易经验。本文提出了一种基于大数据分析的价格评估模型,该模型利用广为流传的车辆数据和大量的车辆交易数据,通过优化的BP神经网络算法分析每种类型的车辆的价格数据。 。它旨在建立二手车价格评估模型,以获取最匹配汽车的价格。本文采用优化的BP神经网络算法在BP神经网络中选择隐藏神经元的最佳数目,从而提高了网络拓扑的收敛速度和预测模型的准确性。通过抽样模拟实验,将预测价格的拟合曲线与优化模型得出的实际交易价格进行比较。结果,优化模型的拟合更好并且精度更高。

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