Robust Learning under Hybrid Noise
Yang Wei, Shuo Chen, Shanshan Ye, Bo Han, Chen Gong

TL;DR
This paper introduces a unified framework called FLR for robust learning from data corrupted by both feature and label noise, using data recovery techniques with theoretical guarantees and demonstrating superior performance.
Contribution
The paper proposes a novel data recovery-based framework for hybrid noise, with convergence guarantees and theoretical analysis of generalization error.
Findings
Outperforms state-of-the-art methods on benchmark datasets.
Effectively recovers clean features and labels under hybrid noise.
Provides theoretical bounds on generalization error.
Abstract
Feature noise and label noise are ubiquitous in practical scenarios, which pose great challenges for training a robust machine learning model. Most previous approaches usually deal with only a single problem of either feature noise or label noise. However, in real-world applications, hybrid noise, which contains both feature noise and label noise, is very common due to the unreliable data collection and annotation processes. Although some results have been achieved by a few representation learning based attempts, this issue is still far from being addressed with promising performance and guaranteed theoretical analyses. To address the challenge, we propose a novel unified learning framework called "Feature and Label Recovery" (FLR) to combat the hybrid noise from the perspective of data recovery, where we concurrently reconstruct both the feature matrix and the label matrix of input…
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Taxonomy
TopicsNeural Networks and Applications · Control Systems and Identification · Fault Detection and Control Systems
