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arxiv 2105.14095 v2 pith:3G4PKJ6F submitted 2021-05-28 cs.LG cs.CLstat.ML

Weighted Training for Cross-Task Learning

classification cs.LG cs.CLstat.ML
keywords cross-tasklearningtawttrainingweighteddistancerepresentation-basedsource
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we introduce Target-Aware Weighted Training (TAWT), a weighted training algorithm for cross-task learning based on minimizing a representation-based task distance between the source and target tasks. We show that TAWT is easy to implement, is computationally efficient, requires little hyperparameter tuning, and enjoys non-asymptotic learning-theoretic guarantees. The effectiveness of TAWT is corroborated through extensive experiments with BERT on four sequence tagging tasks in natural language processing (NLP), including part-of-speech (PoS) tagging, chunking, predicate detection, and named entity recognition (NER). As a byproduct, the proposed representation-based task distance allows one to reason in a theoretically principled way about several critical aspects of cross-task learning, such as the choice of the source data and the impact of fine-tuning.

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