Eosc/norbert/benchmark
Contents
Emerging Thoughts on Benchmarking
The following would be natural places to start. For most of these, while we do have baseline numbers to compare to, we do not have existing set-ups where we could simply plug in a Norwegian BERT and rund, so we may need to identify suitable code for existing BERT-based architectures for e.g. English to re-use. For the first task though (document-level SA on NoReC) Jeremy would have an existing set-up for using mBERT that we could perhaps use.
NLP tasks
NoReC*
- NoReC_fine: structured sentiment analysis
- NoReC_sentences sentence-level 2/3-way polarity
- NoReC_neg: negation cues and scopes
Linguistic pipeline (dependency parsing or PoS tagging)
Lexical semantic
Text classification
- NoReC; for document-level sentiment analysis (i.e. rating prediction). Note that we would want to use another version than the current official release; this has 10k more sentences (and is soon to be officially released).
- Talk of Norway
- NorDial
Other
- NoReC_fine; subset of documents from NoReC annotated with fine-grained sentiment (e.g. for predicting target expression + polarity)
- NorNE; for named entity recognition, extends NDT (also available for the UD version)
- NoReC_neg adds negation cues and scopes to the same subset of sentences as in NoReC_fine.