Large-scale Real-time Personalized Similar Product Recommendations
- URL: http://arxiv.org/abs/2004.05716v1
- Date: Sun, 12 Apr 2020 23:16:14 GMT
- Title: Large-scale Real-time Personalized Similar Product Recommendations
- Authors: Zhi Liu, Yan Huang, Jing Gao, Li Chen, Dong Li
- Abstract summary: We introduce our real-time personalized algorithm to model product similarity and real-time user interests.
Our method achieves a 10% improvement on the add-cart number in the real-world e-commerce scenario.
- Score: 28.718371564543517
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Similar product recommendation is one of the most common scenes in
e-commerce. Many recommendation algorithms such as item-to-item Collaborative
Filtering are working on measuring item similarities. In this paper, we
introduce our real-time personalized algorithm to model product similarity and
real-time user interests. We also introduce several other baseline algorithms
including an image-similarity-based method, item-to-item collaborative
filtering, and item2vec, and compare them on our large-scale real-world
e-commerce dataset. The algorithms which achieve good offline results are also
tested on the online e-commerce website. Our personalized method achieves a 10%
improvement on the add-cart number in the real-world e-commerce scenario.
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