Co-Training-Teaching: A Robust Semi-Supervised Framework for Review-Aware Rating Regression

Author:

Lu Xiangkui1ORCID,Wu Jun1ORCID,Huang Junheng1ORCID,Luo Fangyuan1ORCID,Yuan Jianbo2ORCID

Affiliation:

1. Key Laboratory of Big Data & Artificial Intelligence in Transportation of Ministry of Education, Beijing Jiaotong University, China, and School of Computer and Information Technology, Beijing Jiaotong University, China

2. ByteDance, USA

Abstract

Review-aware Rating Regression (RaRR) suffers the severe challenge of extreme data sparsity as the multi-modality interactions of ratings accompanied by reviews are costly to obtain. Although some studies of semi-supervised rating regression are proposed to mitigate the impact of sparse data, they bear the risk of learning from noisy pseudo-labeled data. In this article, we propose a simple yet effective paradigm, called co-training-teaching ( CoT 2 ), for integrating the merits of both co-training and co-teaching toward robust semi-supervised RaRR. CoT 2 employs two predictors trained with different feature sets of textual reviews, each of which functions as both “labeler” and “validator.” Specifically, one predictor (labeler) first labels unlabeled data for its peer predictor (validator); after that, the validator samples reliable instances from the noisy pseudo-labeled data it received and sends them back to the labeler for updating. By exchanging and validating pseudo-labeled instances, the two predictors are reinforced by each other in an iterative learning process. The final prediction is made by averaging the outputs of both the refined predictors. Extensive experiments show that our CoT 2 considerably outperforms the state-of-the-art recommendation techniques in the RaRR task, especially when the training data is severely insufficient.

Funder

Fundamental Research Funds for the Central Universities

Open Research Fund from the Guangdong Provincial Key Laboratory of Big Data Computing, The Chinese University of Hong Kong, Shenzhen

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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