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README
License: mitPerformance
| Metric | Score |
|---|---|
| Accuracy | 99.00% |
| Precision | 98.23% |
| Recall | 100.00% |
| F1 Score | 99.11% |
Training Details
- Base model: Phi-3-mini-4k-instruct (3.8B params)
- Method: LoRA fine-tuning (r=16, alpha=16)
- Trainable params: 29.8M (0.78%)
- Training samples: 9,000
- Epochs: 2, Final loss: 1.1593
- Hardware: Tesla T4 15.6GB
- Training time: 231 minutes
Datasets
- CEAS_08, SpamAssassin, Nazario, Enron
- Total: 74,388 balanced emails
Novel Contribution
Explainable phishing detection with risk score (0-100), triggered element explanation, and confidence level.
Model provider
omerfarooq223
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Base
microsoft/Phi-3-mini-4k-instruct
Adapter
this model
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