基于卷积神经网络的电子商务个性化推荐

Qinglong Ge
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引用次数: 0

摘要

当前电子商务中存在用户兴趣数据的局部稀疏性,导致个性化产品推荐的准确率较低。构建了一种基于改进的CNN局部相似度预测的项目个性化推荐模型(LSPCNN)。首先,利用卷积神经网络CNN提取局部特征;然后,在CNN网络的基础上加入调节层,对初始用户构建项目评分矩阵,使其兴趣局部表征。最后利用CNN预测缺失分数,实现个性化推荐。实验结果表明,与改进的CNN网络模型和基于混合神经网络的协同过滤推荐模型相比,所提LSPCNN模型的数据稀疏度显著降低,平均绝对误差(MAE)更小。因此,本文提出的算法能够准确提取用户感兴趣的局部特征数据,提高了电子商务个性化推荐的准确性,具有一定的可行性。
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E-Commerce Personalized Recommendation Based on Convolutional Neural Network
There is a local sparsity of user interest data in current e-commerce, resulting in low accuracy of personalized product recommendation. An item personalized recommendation model based on improved local similarity prediction of CNN (LSPCNN) is constructed. Firstly, the convolutional neural network CNN is used to extract local features. Then, a regulating layer is added on the basis of CNN network, and the item scoring matrix is constructed for the initial users to make their interest locally characterized. Finally, CNN is used to predict the missing score, thus realizing personalized recommendation. Experimental results show that compared with the improved CNN network model and the collaborative filtering recommendation model based on hybrid neural network, the data sparsity of the proposed LSPCNN model is significantly reduced, and the mean absolute error (MAE) is smaller. Therefore, the proposed algorithm can accurately extract the local feature data that users are interested in, which improves the accuracy of e-commerce personalized recommendation, and has certain feasibility.
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