GRP: A Gumbel-based Rating Prediction Framework for Imbalanced Recommendation

12/09/2020
by   Yuexin Wu, et al.
0

Rating prediction is a core problem in recommender systems to quantify users preferences towards different items. Due to the imbalanced rating distributions in training data, existing recommendation methods suffer from the biased prediction problem that generates biased prediction results. Thus, their performance on predicting ratings which rarely appear in training data is unsatisfactory. In this paper, inspired by the superior capability of Extreme Value Distribution (EVD)-based methods in modeling the distribution of rare data, we propose a novel Gumbel Distribution-based Rating Prediction framework (GRP) which can accurately predict both frequent and rare ratings between users and items. In our approach, we first define different Gumbel distributions for each rating level, which can be learned by historical rating statistics of users and items. Second, we incorporate the Gumbel-based representations of users and items with their original representations learned from the rating matrix and/or reviews to enrich the representations of users and items via a proposed multi-scale convolutional fusion layer. Third, we propose a data-driven rating prediction module to predict the ratings of user-item pairs. It's worthy to note that our approach can be readily applied to existing recommendation methods for addressing their biased prediction problem. To verify the effectiveness of GRP, we conduct extensive experiments on eight benchmark datasets. Compared with several baseline models, the results show that: 1) GRP achieves state-of-the-art overall performance on all eight datasets; 2) GRP makes a substantial improvement in predicting rare ratings, which shows the effectiveness of our model in addressing the bias prediction problem.

READ FULL TEXT
research
07/10/2019

Flatter is better: Percentile Transformations for Recommender Systems

It is well known that explicit user ratings in recommender systems are b...
research
10/12/2020

Neural Representations in Hybrid Recommender Systems: Prediction versus Regularization

Autoencoder-based hybrid recommender systems have become popular recentl...
research
12/08/2020

TADO: Time-varying Attention with Dual-Optimizer Model

The review-based recommender systems are commonly utilized to measure us...
research
10/29/2018

Explicit Feedbacks Meet with Implicit Feedbacks : A Combined Approach for Recommendation System

Recommender systems recommend items more accurately by analyzing users' ...
research
08/02/2021

Predicting user demographics based on interest analysis

These days, due to the increasing amount of information generated on the...
research
09/02/2019

All You Need is Ratings: A Clustering Approach to Synthetic Rating Datasets Generation

The public availability of collections containing user preferences is of...
research
09/29/2022

A Recommendation Approach based on Similarity-Popularity Models of Complex Networks

Recommender systems have become an essential tool for providers and user...

Please sign up or login with your details

Forgot password? Click here to reset