Gregor Geigle


2021

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AdapterDrop: On the Efficiency of Adapters in Transformers
Andreas Rücklé | Gregor Geigle | Max Glockner | Tilman Beck | Jonas Pfeiffer | Nils Reimers | Iryna Gurevych
Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing

Transformer models are expensive to fine-tune, slow for inference, and have large storage requirements. Recent approaches tackle these shortcomings by training smaller models, dynamically reducing the model size, and by training light-weight adapters. In this paper, we propose AdapterDrop, removing adapters from lower transformer layers during training and inference, which incorporates concepts from all three directions. We show that AdapterDrop can dynamically reduce the computational overhead when performing inference over multiple tasks simultaneously, with minimal decrease in task performances. We further prune adapters from AdapterFusion, which improves the inference efficiency while maintaining the task performances entirely.

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TUDa at WMT21: Sentence-Level Direct Assessment with Adapters
Gregor Geigle | Jonas Stadtmüller | Wei Zhao | Jonas Pfeiffer | Steffen Eger
Proceedings of the Sixth Conference on Machine Translation

This paper presents our submissions to the WMT2021 Shared Task on Quality Estimation, Task 1 Sentence-Level Direct Assessment. While top-performing approaches utilize massively multilingual Transformer-based language models which have been pre-trained on all target languages of the task, the resulting insights are limited, as it is unclear how well the approach performs on languages unseen during pre-training; more problematically, these approaches do not provide any solutions for extending the model to new languages or unseen scripts—arguably one of the objectives of this shared task. In this work, we thus focus on utilizing massively multilingual language models which only partly cover the target languages during their pre-training phase. We extend the model to new languages and unseen scripts using recent adapter-based methods and achieve on par performance or even surpass models pre-trained on the respective languages.