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Building A Non-Personalized Recommender System by Learning Product and Basket Representation

机译:通过学习产品和篮子表示构建非个性化推荐系统

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In this paper, we addressed the problem of learning product and basket representation for a non-personalized recommendation system where the baskets do not have a specific owner. The recommendation models tend to exploit as much information as possible along with basket patterns to improve performance. We focus on the representation problem for the baskets without any customer information. Deep learning-based architectures have solved many representation problems such as natural language processing (NLP) and computer vision (CV) so far. While the NLP model takes a bag of words as input, the recommendation models take a basket of products as input. The learning algorithm uses co-occurrence information and therefore exploits the idea that the things that appear in a similar environment share similar meaning. But traditional representation approaches such as one-hot encoding have dimensionality problems when the number of entities increases. On the other hand, neural models can solve this dimensionality curse and transform each entity into a short and dense vector, namely embeddings. We successfully designed unsupervised and super-vised architectures to solve the product and basket embeddings for a recommendation engine. Our experiments show that the proposed deep learning architecture showed better performance than baseline approaches in terms of many metrics. We also discussed and addressed many product representation related problems throughout the paper.
机译:在本文中,我们解决了对非个性化推荐系统的学习产品和篮子表现的问题,其中篮子没有特定的所有者。建议模型倾向于尽可能多地利用篮子模式来提高性能。我们专注于篮子的表示问题,而无需任何客户信息。基于深度学习的架构已经解决了许多代表性问题,例如自然语言处理(NLP)和计算机视觉(CV)。虽然NLP模型拿一袋单词作为输入,但推荐模型将一篮子产品作为输入。学习算法使用共同发生信息,因此利用了类似环境中出现的事物的想法共享类似的含义。但是,当实体的数量增加时,传统的表示方法如单热编码具有维度问题。另一方面,神经模型可以解决这一维度诅咒并将每个实体转化为短而致密的矢量,即嵌入。我们成功设计了无监督和超级架构的架构,以解决推荐引擎的产品和篮子嵌入。我们的实验表明,在许多指标方面,所提出的深度学习架构表现出比基线方法更好。我们还讨论并讨论了在本文中的许多产品代表相关问题。

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