[Michal Štefánik]: Robustness of Neural Language Models 12. 5. 2022
Abstract
Progress in natural language processing research is catalyzed by the possibilities given by the widespread software frameworks. This paper introduces the Adaptor library that transposes the traditional model-centric approach composed of pre-training + fine-tuning steps to the objective-centric approach, composing the training process by applications of selected objectives. We survey research directions that can benefit from enhanced objective-centric experimentation in multitask training, custom objectives development, dynamic training curricula, or domain adaptation. Adaptor aims to ease the reproducibility of these research directions in practice. Finally, we demonstrate the practical applicability of Adaptor in selected unsupervised domain adaptation scenarios.
2022-05-12-stefanik.mp4
záznam semináře Michal Štefánik
Slides
Readings
M. Štefánik et al.; Adaptor: Objective-Centric Adaptation Framework for Language Models: https://arxiv.org/pdf/2203.03989.pdf