Isabella Olariu


2023

pdf bib
Comparing Pre-Training Schemes for Luxembourgish BERT Models
Cedric Lothritz | Saad Ezzini | Christoph Purschke | Tegawendé Bissyandé | Jacques Klein | Isabella Olariu | Andrey Boytsov | Clément LeFebvre | Anne Goujon
Proceedings of the 19th Conference on Natural Language Processing (KONVENS 2023)

pdf bib
Evaluating Data Augmentation Techniques for the Training of Luxembourgish Language Models
Isabella Olariu | Cedric Lothritz | Tegawendé Bissyandé | Jacques Klein
Proceedings of the 19th Conference on Natural Language Processing (KONVENS 2023)

pdf bib
Evaluating Parameter-Efficient Finetuning Approaches for Pre-trained Models on the Financial Domain
Isabella Olariu | Cedric Lothritz | Jacques Klein | Tegawendé Bissyandé | Siwen Guo | Shohreh Haddadan
Findings of the Association for Computational Linguistics: EMNLP 2023

Large-scale language models with millions, billions, or trillions of trainable parameters are becoming increasingly popular. However, they risk becoming rapidly over-parameterized and the adaptation cost of fully fine-tuning them increases significantly. Storing them becomes progressively impractical as it requires keeping a separate copy of all the fine-tuned weights for each task. By freezing all pre-trained weights during fine-tuning, parameter-efficient tuning approaches have become an appealing alternative to traditional fine-tuning. The performance of these approaches has been evaluated on common NLP tasks of the GLUE benchmark and shown to match full fine-tuning performance, however, their impact is less researched in domain-specific fields such as finance. This work compares the performance of a set of financial BERT-like models to their fully fine-tuned counterparts by leveraging different parameter-efficient tuning methods. We see that results are comparable to traditional fine-tuning while gaining in time and resource efficiency.