🦔 HEDGEhog 🦔: BERT-based multi-class uncertainty cues recognition
Description
A fine-tuned multi-class classification model that detects four different types of uncertainty cues (a.k.a hedges) on a token level.
Uncertainty types
label | type | description | example |
---|---|---|---|
E | Epistemic | The proposition is possible, but its truth-value cannot be decided at the moment. | She may be already asleep. |
I | Investigation | The proposition is in the process of having its truth-value determined. | She examined the role of NF-kappaB in protein activation. |
D | Doxatic | The proposition expresses beliefs and hypotheses, which may be known as true or false by others. | She believes that the Earth is flat. |
N | Condition | The proposition is true or false based on the truth-value of another proposition. | If she gets the job, she will move to Utrecht. |
C | certain | n/a | n/a |
Intended uses and limitations
- The model was fine-tuned with the Simple Transformers library. This library is based on Transformers but the model cannot be used directly with Transformers
pipeline
and classes; doing so would generate incorrect outputs. For this reason, the API on this page is disabled.
How to use
To generate predictions with the model, use the Simple Transformers library:
from simpletransformers.ner import NERModel
model = NERModel(
'bert',
'jeniakim/hedgehog',
use_cuda=False,
labels=["C", "D", "E", "I", "N"],
)
example = "As much as I definitely enjoy solitude, I wouldn't mind perhaps spending little time with you (Björk)"
predictions, raw_outputs = model.predict([example])
The predictions look like this:
[[{'As': 'C'},
{'much': 'C'},
{'as': 'C'},
{'I': 'C'},
{'definitely': 'C'},
{'enjoy': 'C'},
{'solitude,': 'C'},
{'I': 'C'},
{"wouldn't": 'C'},
{'mind': 'C'},
{'perhaps': 'E'},
{'spending': 'C'},
{'little': 'C'},
{'time': 'C'},
{'with': 'C'},
{'you': 'C'},
{'(Björk)': 'C'}]]
In other words, the token 'perhaps' is recognized as an epistemic uncertainty cue and all the other tokens are not uncertainty cues.
Training Data
HEDGEhog is trained and evaluated on the Szeged Uncertainty Corpus (Szarvas et al. 20121). The original sentence-level XML version of this dataset is available here.
The token-level version that was used for the training can be downloaded from here in a form of pickled pandas DataFrame's. You can download either the split sets (train.pkl
137MB, test.pkl
17MB, dev.pkl
17MB) or the full dataset (szeged_fixed.pkl
172MB). Each row in the df contains a token, its features (these are not relevant for HEDGEhog; they were used to train the baseline CRF model, see here), its sentence ID, and its label.
Training Procedure
The following training parameters were used:
- Optimizer: AdamW
- Learning rate: 4e-5
- Num train epochs: 1
- Train batch size: 16
Evaluation Results
class | precision | recall | F1-score | support |
---|---|---|---|---|
Epistemic | 0.90 | 0.85 | 0.88 | 624 |
Doxatic | 0.88 | 0.92 | 0.90 | 142 |
Investigation | 0.83 | 0.86 | 0.84 | 111 |
Condition | 0.85 | 0.87 | 0.86 | 86 |
Certain | 1.00 | 1.00 | 1.00 | 104,751 |
macro average | 0.89 | 0.90 | 0.89 | 105,714 |
References
1 Szarvas, G., Vincze, V., Farkas, R., Móra, G., & Gurevych, I. (2012). Cross-genre and cross-domain detection of semantic uncertainty. Computational Linguistics, 38(2), 335-367.
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