Joint Learning of Pre-Trained and Random Units for Domain Adaptation in Part-of-Speech Tagging
Fine-tuning neural networks is widely used to transfer valuable knowledge from high-resource to low-resource domains. In a standard fine-tuning scheme, source and target problems are trained using the same architecture. Although capable of adapting to new domains, pre-trained units struggle with lea...
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Zusammenfassung: | Fine-tuning neural networks is widely used to transfer valuable knowledge
from high-resource to low-resource domains. In a standard fine-tuning scheme,
source and target problems are trained using the same architecture. Although
capable of adapting to new domains, pre-trained units struggle with learning
uncommon target-specific patterns. In this paper, we propose to augment the
target-network with normalised, weighted and randomly initialised units that
beget a better adaptation while maintaining the valuable source knowledge. Our
experiments on POS tagging of social media texts (Tweets domain) demonstrate
that our method achieves state-of-the-art performances on 3 commonly used
datasets. |
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DOI: | 10.48550/arxiv.1904.03595 |