Explainable Social Contextual Image Recommendation with Hierarchical Attention

06/03/2018
by   Le Wu, et al.
0

Image based social networks are among the most popular social networking services in recent years. With tremendous images uploaded everyday, understanding users' preferences to the user-generated images and recommending them to users have become an urgent need. However, this is a challenging task. On one hand, we have to overcome the extremely data sparsity issue in image recommendation. On the other hand, we have to model the complex aspects that influence users' preferences to these highly subjective content from the heterogeneous data. In this paper, we develop an explainable social contextual image recommendation model to simultaneously explain and predict users' preferences to images. Specifically, in addition to user interest modeling in the standard recommendation, we identify three key aspects that affect each user's preference on the social platform, where each aspect summarizes a contextual representation from the complex relationships between users and images. We design a hierarchical attention model in recommendation process given the three contextual aspects. Particularly, the bottom layered attention networks learn to select informative elements of each aspect from heterogeneous data, and the top layered attention network learns to score the aspect importance of the three identified aspects for each user. In this way, we could overcome the data sparsity issue by leveraging the social contextual aspects from heterogeneous data, and explain the underlying reasons for each user's behavior with the learned hierarchial attention scores. Extensive experimental results on real-world datasets clearly show the superiority of our proposed model.

READ FULL TEXT

page 12

page 13

research
01/15/2020

DiffNet++: A Neural Influence and Interest Diffusion Network for Social Recommendation

Social recommendation has emerged to leverage social connections among u...
research
04/20/2019

A Neural Influence Diffusion Model for Social Recommendation

Precise user and item embedding learning is the key to building a succes...
research
10/20/2021

Hierarchical Aspect-guided Explanation Generation for Explainable Recommendation

Explainable recommendation systems provide explanations for recommendati...
research
10/06/2020

STP-UDGAT: Spatial-Temporal-Preference User Dimensional Graph Attention Network for Next POI Recommendation

Next Point-of-Interest (POI) recommendation is a longstanding problem ac...
research
03/22/2018

Venue Suggestion Using Social-Centric Scores

User modeling is a very important task for making relevant suggestions o...
research
12/20/2017

PERS: A Personalized and Explainable POI Recommender System

The Location-Based Social Networks (LBSN) (e.g., Facebook) have many fac...
research
07/13/2021

Identifying Influential Users in Unknown Social Networks for Adaptive Incentive Allocation Under Budget Restriction

In recent years, recommendation systems have been widely applied in many...

Please sign up or login with your details

Forgot password? Click here to reset