Transcription of Billion-scale Commodity Embedding for E-commerce ...
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Billion-scale Commodity Embedding for E-commerce Recommendation in Alibaba Jizhe Wang, Pipei Huang Huan Zhao Alibaba Group Department of Computer Science and Engineering Hangzhou and Beijing, China Hong Kong University of Science and Technology Kowloon, Hong Kong Zhibo Zhang, Binqiang Zhao Dik Lun Lee [ ] 24 May 2018. Alibaba Group Department of Computer Science and Engineering Beijing, China Hong Kong University of Science and Technology Kowloon, Hong Kong ABSTRACT algorithms; Computing methodologies Learning latent Recommender systems (RSs) have been the most important representations;. technology for increasing the business in Taobao, the largest online consumer-to-consumer (C2C) platform in china . There are three KEYWORDS. major challenges facing RS in Taobao: scalability, sparsity and Recommendation system; Collaborative filtering;. cold start. In this paper, we present our technical solutions to Graph Embedding ; E-commerce Recommendation. address these three challenges.
Alibaba, the largest provider of online business in China, makes it possible for people or companies all over the world to do business online. With one billion users, the Gross Merchandise Volume (GMV) of Alibaba in 2017 is 3,767 billion Yuan and the revenue in 2017 is 158 billion Yuan. In the famous Double-Eleven Day, the
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