Domain-Specific Language Model Post-Training for Indonesian Financial NLP
Abstract
Domain-specific post-training of IndoBERT improves its performance on sentiment analysis and topic classification tasks within the financial ___domain.
BERT and IndoBERT have achieved impressive performance in several NLP tasks. There has been several investigation on its adaption in specialized domains especially for English language. We focus on financial ___domain and Indonesian language, where we perform post-training on pre-trained IndoBERT for financial ___domain using a small scale of Indonesian financial corpus. In this paper, we construct an Indonesian self-supervised financial corpus, Indonesian financial sentiment analysis dataset, Indonesian financial topic classification dataset, and release a family of BERT models for financial NLP. We also evaluate the effectiveness of ___domain-specific post-training on sentiment analysis and topic classification tasks. Our findings indicate that the post-training increases the effectiveness of a language model when it is fine-tuned to ___domain-specific downstream tasks.
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