基于增强神经图的项目知识图协同过滤

M. Sangeetha, Meera Devi Thiagarajan
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引用次数: 2

摘要

推荐系统是对电子商务网站或应用程序进行信息过滤以留住买家的过程。在所有的电子商务网站、社交媒体平台和多媒体平台上使用。这个建议是基于他们自己的经验或用户之间的经验。最近,基于图的过滤技术被用于推荐,以改进建议并易于分析。基于神经图的协同过滤也是推荐系统中常用的技术之一。它是在Yelp、Gowalla和亚马逊图书等基准数据集上实现的。与现有的基于图或基于卷积的网络相比,这种技术可以提供更好的建议。然而,卷积神经网络在执行有限的建议时需要较高的处理时间。为此,本文提出了一种改进的神经图协同滤波方法。在这里,基于内容的过滤在协同过滤过程之前执行。然后,嵌入层将对这两个推荐进行处理,以提供用户和项目之间的高阶关系。由于该建议是基于混合推荐,通过减少epoch数来缩短卷积神经网络的处理时间。因此,最终建议不受较小epoch数量的影响,并且能够减少其计算时间。整个过程在windows 10环境下使用Python 3.6在基准数据集Go Walla和Amazon books上实现。通过对召回率和NDCG度量的比较,该方法优于基于图卷积神经网络的协同过滤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Enhanced Neural Graph based Collaborative Filtering with Item Knowledge Graph
Recommendation system is a process of filtering information to retain buyers on e-commerce sites or applications. It is used on all e-commerce sites, social media platform and multimedia platform. This recommendation is based on their own experience or experience between users. In recent days, the graph-based filtering techniques are used for the recommendation to improve the suggestions and for easy analysing. Neural graph based collaborative filtering is also one of the techniques used for recommendation system. It is implemented on the benchmark datasets like Yelp, Gowalla and Amazon books. This technique can suggest better recommendations as compared to the existing graph based or convolutional based networks. However, it requires higher processing time for convolutional neural network for performing limited suggestions. Hence, in this paper, an improved neural graph collaborative filtering is proposed. Here, the content-based filtering is performed before the collaborative filtering process. Then, the embedding layer will process on both the recommendations to provide a higher order relation between the users and items. As the suggestion is based on hybrid recommendation, the processing time of Convolutional neural network is reduced by reducing the number of epochs. Due to this, the final recommendation is not affected by the smaller number of epochs and also able to reduce its computational time. The whole process is realized in Python 3.6 under windows 10 environment on benchmark datasets Go Walla and Amazon books. Based on the comparison of recall and NDCG metric, the proposed neural graph-based filtering outperforms the collaborative filtering based on graph convolution neural network.
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