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From Noisy Prediction to True Label: Noisy Prediction Calibration via Generative Model
categorize
Machine Learning
Author
HeeSun Bae, Seungjae Shin, Byeonghu Na, JoonHo Jang, and Il-Chul Moon
Year
2022
Conference Name
International Conference on Machine Learning (ICML 2022)
Presentation Date
Jul 17
City
Baltimore
Country
USA
File
From Noisy Prediction to True Label Noisy Prediction Calibration via Generative Model.pdf (5.0M) 26회 다운로드 DATE : 2024-01-16 15:04:15

HeeSun Bae, Seungjae Shin, Byeonghu Na, JoonHo Jang, and Il-Chul Moon, From Noisy Prediction to True Label: Noisy Prediction Calibration via Generative Model, International Conference on Machine Learning (ICML 2022), Baltimore, USA, Jul 17, 2022 


Abstract

Noisy labels are inevitable yet problematic in machine learning society. It ruins the generalization of a classifier by making the classifier over-fitted to noisy labels. Existing methods on noisy label have focused on modifying the classifier during the training procedure. It has two potential problems. First, these methods are not applicable to a pre-trained classifier without further access to training. Second, it is not easy to train a classifier and regularize all negative effects from noisy labels, simultaneously. We suggest a new branch of method, Noisy Prediction Calibration (NPC) in learning with noisy labels. Through the introduction and estimation of a new type of transition matrix via generative model, NPC corrects the noisy prediction from the pre-trained classifier to the true label as a post-processing scheme. We prove that NPC theoretically aligns with the transition matrix based methods. Yet, NPC empirically provides more accurate pathway to estimate true label, even without involvement in classifier learning. Also, NPC is applicable to any classifier trained with noisy label methods, if training instances and its predictions are available. Our method, NPC, boosts the classification performances of all baseline models on both synthetic and real-world datasets. The implemented code is available at https://github.com/BaeHeeSun/NPC. 


@inproceedings{bae2022noisy, 

title={From noisy prediction to true label: Noisy prediction calibration via generative model}, 

author={Bae, HeeSun and Shin, Seungjae and Na, Byeonghu and Jang, JoonHo and Song, Kyungwoo and Moon, Il-Chul}, 

booktitle={International Conference on Machine Learning}, 

pages={1277--1297}, 

year={2022}, 

organization={PMLR} 

} 


Source Website:

https://proceedings.mlr.press/v162/bae22a/bae22a.pdf