Meta Self-Refinement for Robust Learning with Weak Supervision
Training deep neural networks (DNNs) with weak supervision has been a hot topic as it can significantly reduce the annotation cost. However, labels from weak supervision can be rather noisy and the high capacity of DNNs makes them easy to overfit the noisy labels. Recent methods leverage self-training techniques to train noise-robust models, where a teacher trained on noisy labels is used to teach a student. However, the teacher from such models might fit a substantial amount of noise and produce wrong pseudo-labels with high confidence, leading to error propagation. In this work, we propose Meta Self-Refinement (MSR), a noise-resistant learning framework, to effectively combat noisy labels from weak supervision sources. Instead of purely relying on a fixed teacher trained on noisy labels, we keep updating the teacher to refine its pseudo-labels. At each training step, it performs a meta gradient descent on the current mini-batch to maximize the student performance on a clean validation set. Extensive experimentation on eight NLP benchmarks demonstrates that MSR is robust against noise in all settings and outperforms the state-of-the-art up to 11.4
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