基于消息加权平均的高效图推荐系统

Faizan Ahemad
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引用次数: 0

摘要

我们展示了一个新颖的解决方案,以推荐系统的问题,我们面临一个永久的软项目冷启动问题。我们的系统旨在向潜在卖家推荐需要的产品,以便在亚马逊商店上架。这些产品总是只有很少的交互,从而产生了一个永久的软项目冷启动情况。现代协同过滤方法利用内容属性解决冷启动问题,并利用热启动项中存在的隐式信号。这种方法在我们的用例中失败了,因为我们的整个项目集总是面临冷启动问题。我们的产品图有超过5亿个节点和超过50亿个边,这使得使用现代图算法进行训练和推理的计算非常密集。为了克服这些挑战,我们提出了一个减少数据集大小的系统,并采用改进的建模技术来减少存储和计算而不损失性能。特别是,我们使用过滤技术减少了图的大小,然后使用层间消息加权平均(WAML)算法利用这个减少的积图。WAML通过减少LightGCN[8]和图注意网络(GAT)[20]的计算时间来简化大图上的训练,并通过比LightGCN和比GAT增加recall@100来改进以前的方法。
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Efficient Graph based Recommender System with Weighted Averaging of Messages
We showcase a novel solution to a recommendation system problem where we face a perpetual soft item cold start issue. Our system aims to recommend demanded products to prospective sellers for listing in Amazon stores. These products always have only few interactions thereby giving rise to a perpetual soft item cold start situation. Modern collaborative filtering methods solve cold start using content attributes and exploit the existing implicit signals from warm start items. This approach fails in our use-case since our entire item set faces cold start issue always. Our Product Graph has over 500 Million nodes and over 5 Billion edges which makes training and inference using modern graph algorithms very compute intensive. To overcome these challenges we propose a system which reduces the dataset size and employs an improved modelling technique to reduce storage and compute without loss in performance. Particularly, we reduce our graph size using a filtering technique and then exploit this reduced product graph using Weighted Averaging of Messages over Layers (WAML) algorithm. WAML simplifies training on large graphs and improves over previous methods by reducing compute time to of LightGCN [8] and of Graph Attention Network (GAT) [20] and increasing recall@100 by over LightGCN and over GAT.
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