RankUp: Boosting Semi-Supervised Regression with an Auxiliary Ranking Classifier
- URL: http://arxiv.org/abs/2410.22124v1
- Date: Tue, 29 Oct 2024 15:25:21 GMT
- Title: RankUp: Boosting Semi-Supervised Regression with an Auxiliary Ranking Classifier
- Authors: Pin-Yen Huang, Szu-Wei Fu, Yu Tsao,
- Abstract summary: State-of-the-art (SOTA) semi-supervised learning techniques, such as FixMatch and it's variants, have demonstrated impressive performance in classification tasks.
We present RankUp, a simple yet effective approach that adapts existing semi-supervised classification techniques to enhance the performance of regression tasks.
- Score: 21.37308028303897
- License:
- Abstract: State-of-the-art (SOTA) semi-supervised learning techniques, such as FixMatch and it's variants, have demonstrated impressive performance in classification tasks. However, these methods are not directly applicable to regression tasks. In this paper, we present RankUp, a simple yet effective approach that adapts existing semi-supervised classification techniques to enhance the performance of regression tasks. RankUp achieves this by converting the original regression task into a ranking problem and training it concurrently with the original regression objective. This auxiliary ranking classifier outputs a classification result, thus enabling integration with existing semi-supervised classification methods. Moreover, we introduce regression distribution alignment (RDA), a complementary technique that further enhances RankUp's performance by refining pseudo-labels through distribution alignment. Despite its simplicity, RankUp, with or without RDA, achieves SOTA results in across a range of regression benchmarks, including computer vision, audio, and natural language processing tasks. Our code and log data are open-sourced at https://github.com/pm25/semi-supervised-regression.
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