基于嵌入初始化权值的神经网络下一项预测

Ç. Yildiz, M. Aker, Y. Yaslan
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引用次数: 0

摘要

随着电子商务和电子营销领域交易量的不断增加,基于会话的推荐系统已经成为人类日常生活的一部分。能够分析当前用户在系统上留下的痕迹,并且比其他公司更了解客户的公司,可以领先竞争对手一步。在这个概念中,当深入研究相关的深度学习模型时,项目的表示成为关键点。由于会话中每个项目之间的关系将直接影响到预测该会话中的下一个项目的任务,因此需要以有效的方式提取每个项目之间的关系。使用自动编码器系统来实现揭示项目之间隐藏特征的任务,并以更有意义的方式表示这些关系,将会提高当前最先进模型的性能,并提供新的基于会话的方法,这些方法可以超越当前最先进的模型。本文采用基于RBM层的自编码器获得的项目嵌入来初始化最先进的图神经网络SR-GNN和TA-GNN的权值,并与随机权值初始化模型的性能进行了比较。根据提出的权重初始化,使用预训练的项目嵌入将提高推荐模型的性能。由于预先训练的项目嵌入,项目之间的隐藏关系以更好的方式建模,并且引入的模型优于当前最先进的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Next Item Prediction Using Neural Networks with Embedding Initialized Weights
Session-based recommendation systems became a very part of humankind’s daily life, as a result of the increasing transaction volume of e-commerce and e-marketing fields. Companies that can analyze the trails left by their current users on their systems and know their customers better than other firms, can become one step ahead of their rivals. In this concept, representations of items become a key point when related deep learning models are investigated closer. Since the relationship between each item within a session will have a direct effect on the task that involves predicting the next item in that session, extracting these relationships among each item needs to be handled in an effective manner. Using auto encoder systems to achieve the task of revealing hidden features between items and representing these relationships in a more meaningful way, will result in both boosting current state-of-art models’ performance and offering new session-based methods that can overperform the current state-of-art models. In this paper, state-of-the-art graph neural networks SR-GNN’s and TA-GNN’s weights are initialized with item embeddings that are obtained from autoencoder with RBM layers, and the performance of the models are compared with random weight initialization. According to the proposed weight initialization, using pre-trained item embeddings will increase the performance of the recommender model. Thanks to the pre-trained item embeddings, the hidden relationship between items modeled in a better way, and the introduced model has overperformed the current state-of-art techniques.
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