GIFT: Graph-guIded Feature Transfer for Cold-Start Video Click-Through Rate Prediction

02/21/2022
by   Sihao Hu, et al.
0

Short video has witnessed rapid growth in China and shows a promising market for promoting the sales of products in e-commerce platforms like Taobao. To ensure the freshness of the content, the platform needs to release a large number of new videos every day, which makes the conventional click-through rate (CTR) prediction model suffer from the severe item cold-start problem. In this paper, we propose GIFT, an efficient Graph-guIded Feature Transfer system, to fully take advantages of the rich information of warmed-up videos that related to the cold-start video. More specifically, we conduct feature transfer from warmed-up videos to those cold-start ones by involving the physical and semantic linkages into a heterogeneous graph. The former linkages consist of those explicit relationships (e.g., sharing the same category, under the same authorship etc.), while the latter measure the proximity of multimodal representations of two videos. In practice, the style, content, and even the recommendation pattern are pretty similar among those physically or semantically related videos. Besides, in order to provide the robust id representations and historical statistics obtained from warmed-up neighbors that cold-start videos covet most, we elaborately design the transfer function to make aware of different transferred features from different types of nodes and edges along the metapath on the graph. Extensive experiments on a large real-world dataset show that our GIFT system outperforms SOTA methods significantly and brings a 6.82 homepage of Taobao App.

READ FULL TEXT

page 2

page 3

research
08/16/2018

IceBreaker: Solving Cold Start Problem for Video Recommendation Engines

Internet has brought about a tremendous increase in content of all forms...
research
05/24/2020

Learning to Transfer Graph Embeddings for Inductive Graph based Recommendation

With the increasing availability of videos, how to edit them and present...
research
04/24/2023

Attention-guided Multi-step Fusion: A Hierarchical Fusion Network for Multimodal Recommendation

The main idea of multimodal recommendation is the rational utilization o...
research
05/27/2022

Improving Item Cold-start Recommendation via Model-agnostic Conditional Variational Autoencoder

Embedding MLP has become a paradigm for modern large-scale recommend...
research
06/13/2023

Better Generalization with Semantic IDs: A case study in Ranking for Recommendations

Training good representations for items is critical in recommender model...
research
02/13/2019

Interest-Related Item Similarity Model Based on Multimodal Data for Top-N Recommendation

Nowadays, the recommendation systems are applied in the fields of e-comm...
research
08/02/2021

Cold Start Similar Artists Ranking with Gravity-Inspired Graph Autoencoders

On an artist's profile page, music streaming services frequently recomme...

Please sign up or login with your details

Forgot password? Click here to reset