基于cnn - bilstm -注意力模型的服装趋势预测研究

Chunfa Zhang, Ning Chen, Shu-xu Zhao
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引用次数: 1

摘要

现有的服装趋势预测方法多采用传统的时间序列预测方法,数据来源多为电子商务网站的销售数据,预测精度误差较大。本文提出了基于社交媒体数据的服装趋势预测新模型CNN-BiLSTM-Attention。对Geostyle数据集进行预处理,得到服装流行度指数。首先,利用一维CNN提取服装流行度指数中的重要特征。第二,利用BiLSTM充分利用语境信息。第三,在输出中加入注意机制,可以突出相关信息,抑制不相关信息,显著提高预测精度。实验结果表明,该方法在服装趋势预测中的应用效果明显优于其他传统的时间序列预测方法和现有的深度学习方法。
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Research on Apparel Trend Prediction Based on CNN-BiLSTM-Attention Model
The existing methods for forecasting clothing trends mostly use traditional time series forecasting methods, and the data sources are mostly sale data from e-commerce websites, which have large errors in forecasting accuracy. This paper proposes a new model CNN-BiLSTM-Attention for predicting clothing trends based on social media data. The Geostyle dataset is pre-processed to get the clothing popularity index. First, One-dimensional CNN is used to extract the important features in the clothing popularity index. Second, the BiLSTM is used to make full use of contextual information. Third, adding an Attention mechanism to the output can highlight relevant information, suppress irrelevant information, and significantly improve prediction accuracy. The experimental results show that our method is significantly better than other traditional time series forecasting methods and existing deep learning methods when applied to apparel trend forecasting.
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