Domain Fine-Tuning FinBERT on Finnish Histopathological Reports: Train-Time Signals and Downstream Correlations

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Authors Rami Luisto, Liisa Petรคinen, Tommi Grรถnholm, Jan Bรถhm, Maarit Ahtiainen, Tomi Lilja, Ilkka Pรถlรถnen, Sami ร„yrรคmรถ arXiv ID 2604.14815 Category cs.CL: Computation & Language Citations 0
Abstract
In NLP classification tasks where little labeled data exists, domain fine-tuning of transformer models on unlabeled data is an established approach. In this paper we have two aims. (1) We describe our observations from fine-tuning the Finnish BERT model on Finnish medical text data. (2) We report on our attempts to predict the benefit of domain-specific pre-training of Finnish BERT from observing the geometry of embedding changes due to domain fine-tuning. Our driving motivation is the common\situation in healthcare AI where we might experience long delays in acquiring datasets, especially with respect to labels.
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