Deep end-to-end learning for price prediction of second-hand items

被引:0
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作者
Ahmed Fathalla
Ahmad Salah
Kenli Li
Keqin Li
Piccialli Francesco
机构
[1] Hunan University,College of Computer Science and Electrical Engineering
[2] and the National Supercomputing Center in Changsha,Department of Mathematics, Faculty of Science
[3] Suez Canal University,Faculty of Computers and Informatics
[4] Zagazig University,undefined
[5] State University of New York,undefined
[6] University of Naples Federico II,undefined
来源
关键词
LSTM; ARIMA; SARIMA; Linear regression; Time series analysis; Price prediction; Second-hand items;
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学科分类号
摘要
Recent years have witnessed the rapid development of online shopping and ecommerce websites, e.g., eBay and OLX. Online shopping markets offer millions of products for sale each day. These products are categorized into many product categories. It is crucial for sellers to correctly estimate the price of the second-hand item. State-of-the-art methods can predict the price of only one item category. In addition, none of the existing methods utilized the price range of a given second-hand item in the prediction task, as there are several advertisements for the same product at different prices. In this vein, as the first contribution, we propose a deep model architecture for predicting the price of a second-hand item based on the image and textual description of the item for different sets of item types. This proposed method utilizes a deep neural network involving long short-term memory (LSTM) and convolutional neural network architectures for price prediction. The proposed model achieved a better mean absolute error accuracy score in comparison with the support vector machine baseline model. In addition, the second contribution includes twofold. First, we propose forecasting the minimum and maximum prices of the second-hand item. The models used for the forecasting task utilize linear regression, LSTM, and seasonal autoregressive integrated moving average methods. Second, we propose utilizing the model of the first contribution in predicting the item quality score. Then, the item quality score and the forecasted minimum and maximum prices are combined to provide the item’s final predicted price. Using a dataset crawled from a website for second-hand items, the proposed method of combining the predicted second-hand item quality score with the forecasted minimum and maximum price outperforms the other models in all of the used accuracy metrics with a significant performance gap.
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页码:4541 / 4568
页数:27
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