Parameter-efficient fine-tuning methods (PEFTs) offer the promise of adapting large pre-trained models while only tuning a small number of parameters. They have been shown to be competitive with full model fine-tuning for many downstream tasks. However, prior work indicates that PEFTs may not work as well for machine translation (MT), and there is no comprehensive study showing when PEFTs work for MT. We conduct a comprehensive empirical study of PEFTs for MT, considering (1) various parameter budgets, (2) a diverse set of language-pairs, and (3) different pre-trained models. We find that 'adapters', in which small feed-forward networks are added after every layer, are indeed on par with full model fine-tuning when the parameter budget corr...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
Differently from the traditional statistical MT that decomposes the translation task into distinct s...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
Pre-trained language models received extensive attention in recent years. However, it is still chall...
We analyze the learning dynamics of neural language and translation models using Loss Change Allocat...
Transfer learning improves quality for low-resource machine translation, but it is unclear what exac...
Neural machine translation (NMT) has been a mainstream method for the machine translation (MT) task....
A recent family of techniques, dubbed as lightweight fine-tuning methods, facilitates parameter-effi...
Neural machine translation is known to require large numbers of parallel training sentences, which g...
We study the impact of source length and verbosity of the tuning dataset on the per-formance of para...
The performance of Phrase-Based Statistical Machine Translation (PBSMT) systems mostly depends on ...
We introduce BitFit, a sparse-finetuning method where only the bias-terms of the model (or a subset ...
Recent progress in neural machine translation is directed towards larger neural networks trained on ...
Transformers are responsible for the vast majority of recent advances in natural language processing...
Non-autoregressive translation (NAT) models remove the dependence on previous target tokens and gene...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
Differently from the traditional statistical MT that decomposes the translation task into distinct s...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
Pre-trained language models received extensive attention in recent years. However, it is still chall...
We analyze the learning dynamics of neural language and translation models using Loss Change Allocat...
Transfer learning improves quality for low-resource machine translation, but it is unclear what exac...
Neural machine translation (NMT) has been a mainstream method for the machine translation (MT) task....
A recent family of techniques, dubbed as lightweight fine-tuning methods, facilitates parameter-effi...
Neural machine translation is known to require large numbers of parallel training sentences, which g...
We study the impact of source length and verbosity of the tuning dataset on the per-formance of para...
The performance of Phrase-Based Statistical Machine Translation (PBSMT) systems mostly depends on ...
We introduce BitFit, a sparse-finetuning method where only the bias-terms of the model (or a subset ...
Recent progress in neural machine translation is directed towards larger neural networks trained on ...
Transformers are responsible for the vast majority of recent advances in natural language processing...
Non-autoregressive translation (NAT) models remove the dependence on previous target tokens and gene...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
Differently from the traditional statistical MT that decomposes the translation task into distinct s...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...