Boosting the Rating Prediction with Click Data and Textual Contents

08/21/2019
by   ThaiBinh Nguyen, et al.
0

Matrix factorization (MF) is one of the most efficient methods for rating predictions. MF learns user and item representations by factorizing the user-item rating matrix. Further, textual contents are integrated to conventional MF to address the cold-start problem. However, the textual contents do not reflect all aspects of the items. In this paper, we propose a model that leverages the information hidden in the item co-click (i.e., items that are often clicked together by a user) into learning item representations. We develop TCMF (Textual Co Matrix Factorization) that learns the user and item representations jointly from the user-item matrix, textual contents and item co-click matrix built from click data. Item co-click information captures the relationships between items which are not captured via textual contents. The experiments on two real-world datasets MovieTweetings, and Bookcrossing) demonstrate that our method outperforms competing methods in terms of rating prediction. Further, we show that the proposed model can learn effective item representations by comparing with state-of-the-art methods in classification task which uses the item representations as input vectors.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/15/2020

Hierarchical Text Interaction for Rating Prediction

Traditional recommender systems encounter several challenges such as dat...
research
12/06/2021

MatMat: Matrix Factorization by Matrix Fitting

Matrix factorization is a widely adopted recommender system technique th...
research
08/22/2019

Data Context Adaptation for Accurate Recommendation with Additional Information

Given a sparse rating matrix and an auxiliary matrix of users or items, ...
research
10/29/2014

Latent Feature Based FM Model For Rating Prediction

Rating Prediction is a basic problem in Recommender System, and one of t...
research
05/24/2017

Nonparametric Preference Completion

We consider the task of collaborative preference completion: given a poo...
research
12/25/2019

Convolutional Quantum-Like Language Model with Mutual-Attention for Product Rating Prediction

Recommender systems are designed to help mitigate information overload u...
research
08/28/2018

Matrix Factorization Equals Efficient Co-occurrence Representation

Matrix factorization is a simple and effective solution to the recommend...

Please sign up or login with your details

Forgot password? Click here to reset