Suicidal Detection System

This is a fine-tuned model based on a transformer architecture distilBERT for detecting suicidal intent or ideation in text. This model purpose is for text-classification in suicidal detection system.

Example output

Text Input Label Score
"I want to jump off this bridge" Suicidal 0.89

Example

from transformers import pipeline, DistilBertTokenizer, DistilBertForSequenceClassification

tokenizer = DistilBertTokenizer.from_pretrained("Kebinnuil/suicidal_detection_model")
model = pipeline("text-classification", model="Kebinnuil/suicidal_detection_model")

result = model("I want to jump off the bridge")
print(result)

Training Metrics

The dataset was split into 80/10/10 for train/validation/test set. Table below shows the result of the model's training metrics.

Epoch Training Loss Validation Loss Accuracy AUC
1 0.442800 0.348061 0.838000 0.925000
2 0.304100 0.331631 0.850000 0.935000
3 0.261600 0.329701 0.851000 0.936000

Classification Report

Class Precision Recall F1-score Support
0 0.87 0.84 0.85 1211
1 0.84 0.87 0.86 1189

Accuracy: 0.86
Macro avg: Precision 0.86, Recall 0.86, F1-score 0.86
Weighted avg: Precision 0.86, Recall 0.86, F1-score 0.86
Total samples: 2400

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Dataset used to train Kebinnuil/suicidal_detection_model