Explore User Neighborhood for Real-time E-commerce Recommendation

02/28/2021
by   Xu Xie, et al.
0

Recommender systems play a vital role in modern online services, such as Amazon and Taobao. Traditional personalized methods, which focus on user-item (UI) relations, have been widely applied in industrial settings, owing to their efficiency and effectiveness. Despite their success, we argue that these approaches ignore local information hidden in similar users. To tackle this problem, user-based methods exploit similar user relations to make recommendations in a local perspective. Nevertheless, traditional user-based methods, like userKNN and matrix factorization, are intractable to be deployed in the real-time applications since such transductive models have to be recomputed or retrained with any new interaction. To overcome this challenge, we propose a framework called self-complementary collaborative filtering (SCCF) which can make recommendations with both global and local information in real time. On the one hand, it utilizes UI relations and user neighborhood to capture both global and local information. On the other hand, it can identify similar users for each user in real time by inferring user representations on the fly with an inductive model. The proposed framework can be seamlessly incorporated into existing inductive UI approach and benefit from user neighborhood with little additional computation. It is also the first attempt to apply user-based methods in real-time settings. The effectiveness and efficiency of SCCF are demonstrated through extensive offline experiments on four public datasets, as well as a large scale online A/B test in Taobao.

READ FULL TEXT
research
04/12/2020

Large-scale Real-time Personalized Similar Product Recommendations

Similar product recommendation is one of the most common scenes in e-com...
research
01/08/2021

Dynamic Graph Collaborative Filtering

Dynamic recommendation is essential for modern recommender systems to pr...
research
09/09/2021

Trust your neighbors: A comprehensive survey of neighborhood-based methods for recommender systems

Collaborative recommendation approaches based on nearest-neighbors are s...
research
02/15/2021

User Embedding based Neighborhood Aggregation Method for Inductive Recommendation

We consider the problem of learning latent features (aka embedding) for ...
research
04/29/2018

Collaborative Memory Network for Recommendation Systems

Recommendation systems play a vital role to keep users engaged with pers...
research
06/11/2023

Mean-Variance Efficient Collaborative Filtering for Stock Recommendation

The rise of FinTech has transformed financial services onto online platf...
research
06/12/2019

Real-time Attention Based Look-alike Model for Recommender System

Recently, deep learning models play more and more important roles in con...

Please sign up or login with your details

Forgot password? Click here to reset