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Predicting Auction Price of Vehicle License Plate with Deep Residual Learning

机译:基于深度残差预测的车牌拍卖价格

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摘要

Due to superstition, license plates with desirable combinations of characters are highly sought after in China, fetching prices that can reach into the millions in government-held auctions. Despite the high stakes involved, there has been essentially no attempt to provide price estimates for license plates. We present an end-to-end neural network model that simultaneously predict the auction price, gives the distribution of prices and produces latent feature vectors. While both types of neural network architectures we consider outperform simpler machine learning methods, convolutional networks outperform recurrent networks for comparable training time or model complexity. The resulting model powers our online price estimator and search engine.
机译:由于迷信,在中国急需具有理想字符组合的车牌,其价格可以在政府拍卖中达到数百万美元。尽管涉及高额赌注,但基本上没有尝试提供车牌价格估算。我们提出了一种端到端神经网络模型,该模型可以同时预测拍卖价格,给出价格分布并产生潜在特征向量。虽然我们认为两种神经网络架构的性能都优于简单的机器学习方法,但对于可比的训练时间或模型复杂性,卷积网络的性能优于循环网络。结果模型为我们的在线价格估算器和搜索引擎提供了动力。

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