enguard/tiny-guard-8m-en-prompt-hate-speech-binary-moderation
This model is a fine-tuned Model2Vec classifier based on minishlab/potion-base-8m for the prompt-hate-speech-binary found in the enguard/multi-lingual-prompt-moderation dataset.
Installation
pip install model2vec[inference]
Usage
from model2vec.inference import StaticModelPipeline
model = StaticModelPipeline.from_pretrained(
"enguard/tiny-guard-8m-en-prompt-hate-speech-binary-moderation"
)
text = "Example sentence"
model.predict([text])
model.predict_proba([text])
Why should you use these models?
- Optimized for precision to reduce false positives.
- Extremely fast inference: up to x500 faster than SetFit.
This model variant
Below is a quick overview of the model variant and core metrics.
| Field |
Value |
| Classifies |
prompt-hate-speech-binary |
| Base Model |
minishlab/potion-base-8m |
| Precision |
0.9152 |
| Recall |
0.8233 |
| F1 |
0.8668 |
Confusion Matrix
| True \ Predicted |
FAIL |
PASS |
| FAIL |
206 |
44 |
| PASS |
19 |
231 |
Full metrics (JSON)
{
"FAIL": {
"precision": 0.9151785714285714,
"recall": 0.8232931726907631,
"f1-score": 0.8668076109936576,
"support": 249.0
},
"PASS": {
"precision": 0.84,
"recall": 0.924,
"f1-score": 0.88,
"support": 250.0
},
"accuracy": 0.87374749498998,
"macro avg": {
"precision": 0.8775892857142857,
"recall": 0.8736465863453815,
"f1-score": 0.8734038054968287,
"support": 499.0
},
"weighted avg": {
"precision": 0.8775139564843973,
"recall": 0.87374749498998,
"f1-score": 0.8734170243234883,
"support": 499.0
}
}
Sample Predictions
| Text |
True Label |
Predicted Label |
| It really only works on bitchy women because they get insulted that I think they look old |
FAIL |
FAIL |
| You mean the Master of Mesopotamia |
PASS |
PASS |
| Oh fuck that's so stupid. You believed his father to be dead and you acted like a decent person. Fuck this gay earth |
FAIL |
FAIL |
| I'm taking it. Thanks for suggestion. |
PASS |
PASS |
| I think you fell for a person, not a gender. |
PASS |
PASS |
| It really only works on bitchy women because they get insulted that I think they look old |
FAIL |
FAIL |
Prediction Speed Benchmarks
| Dataset Size |
Time (seconds) |
Predictions/Second |
| 1 |
0.0003 |
3214.03 |
| 500 |
0.038 |
13171.82 |
| 500 |
0.0332 |
15072.57 |
Other model variants
Below is a general overview of the best-performing models for each dataset variant.
Resources
Citation
If you use this model, please cite Model2Vec:
@software{minishlab2024model2vec,
author = {Stephan Tulkens and {van Dongen}, Thomas},
title = {Model2Vec: Fast State-of-the-Art Static Embeddings},
year = {2024},
publisher = {Zenodo},
doi = {10.5281/zenodo.17270888},
url = {https://github.com/MinishLab/model2vec},
license = {MIT}
}