Learning Discriminative Recommendation Systems with Side Information

Author:

Zhao Feipeng12,Guo Yuhong34

Affiliation:

1. Computer and Information Sciences

2. Temple University, Philadelphia, USA

3. School of Computer Science

4. Carleton University, Ottawa, Canada

Abstract

Top-N recommendation systems are useful in many real world applications such as E-commerce platforms. Most previous methods produce top-N recommendations based on the observed user purchase or recommendation activities. Recently, it has been noticed that side information that describes the items can be produced from auxiliary sources and help to improve the performance of top-N recommendation systems; e.g., side information of the items can be collected from the item reviews. In this paper, we propose a joint discriminative prediction model that exploits both the partially observed user-item recommendation matrix and the item-based side information to build top-N recommendation systems. This joint model aggregates observed user-item recommendation activities to produce the missing user-item recommendation scores while simultaneously training a linear regression model to predict the user-item recommendation scores from auxiliary item features. We evaluate the proposed approach on a number of recommendation datasets. The experimental results show that the proposed joint model is very effective for producing top-N recommendation systems.

Publisher

International Joint Conferences on Artificial Intelligence Organization

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2. ConGCN: Factorized Graph Convolutional Networks for Consensus Recommendation;Machine Learning and Knowledge Discovery in Databases: Research Track;2023

3. A Revisiting Study of Appropriate Offline Evaluation for Top- N Recommendation Algorithms;ACM Transactions on Information Systems;2022-12-21

4. A Review Paper of Model Based Collaborative Filtering Techniques;2022 International Conference on Data Science and Intelligent Computing (ICDSIC);2022-11-01

5. Collaborative Filtering Recommendation Algorithm Based on Element-Wise Alternating Least Squares and Time Weight;Advances in Intelligent Systems and Computing;2019-07-31

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