Edit model card

BERT-Base-Uncased Emotion Classification Model

Model Architecture

  • Base Model: bert-base-uncased
  • Architecture: Transformer-based model (BERT)
  • Fine-Tuned Task: Emotion classification
  • Number of Labels: 6 (sadness, joy, love, anger, fear, surprise)

Dataset Information

The model was fine-tuned on the dair-ai/emotion dataset, which consists of English tweets classified into six emotion categories.

  • Training Dataset Size: 16,000 examples
  • Validation Dataset Size: 2,000 examples
  • Test Dataset Size: 2,000 examples
  • Features:
    • text: The text of the tweet
    • label: The emotion label for the text (ClassLabel: ['sadness', 'joy', 'love', 'anger', 'fear', 'surprise'])

Training Arguments

The model was trained using the following hyperparameters:

  • Learning Rate: 2e-05
  • Batch Size: 16
  • Number of Epochs: 20 (stopped early at 7 epochs)
  • Gradient Accumulation Steps: 2
  • Weight Decay: 0.01
  • Mixed Precision (FP16): True
  • Early Stopping: Enabled (see details below)
  • Logging: Progress logged every 100 steps
  • Save Strategy: Checkpoints saved at the end of each epoch, with the 3 most recent checkpoints retained

The model was trained for 7 epochs, but it stopped early due to early stopping. Early stopping was configured with the following details:

  • Patience: 3 epochs (training stops if no improvement in F1 score for 3 consecutive evaluations)
  • Best Metric: F1 score (greater is better)
  • Final Epoch: The model was trained for 7 epochs (out of the planned 20) and stopped early due to no improvement in evaluation metrics.

Final Training Metrics (After 7 Epochs)

The model achieved the following results on the validation dataset in the final epoch:

  • Accuracy: 0.9085
  • Precision: 0.8736
  • Recall: 0.8962
  • F1 Score: 0.8824

Test Set Evaluation

After training, the model was evaluated on a held-out test set. The following are the results on the test dataset:

  • Test Accuracy: 0.9180
  • Test Precision: 0.8663
  • Test Recall: 0.8757
  • Test F1 Score: 0.8706

Usage

You can load the model and tokenizer for inference using the Hugging Face transformers library with the pipeline:

from transformers import pipeline

# Load the emotion classification pipeline
classifier = pipeline("text-classification", model='Prikshit7766/bert-base-uncased-emotion', return_all_scores=True)

# Test the classifier with a sample sentence
prediction = classifier("I am feeling great and happy today!")

# Print the predictions
print(prediction)

Output

  [[{'label': 'sadness', 'score': 0.00010687233589123935},
    {'label': 'joy', 'score': 0.9991187453269958},
    {'label': 'love', 'score': 0.00041500659426674247},
    {'label': 'anger', 'score': 7.090374856488779e-05},
    {'label': 'fear', 'score': 5.2315706852823496e-05},
    {'label': 'surprise', 'score': 0.0002362433006055653}]]
Downloads last month
94
Safetensors
Model size
109M params
Tensor type
F32
·
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Model tree for Prikshit7766/bert-base-uncased-emotion

Finetuned
(2120)
this model

Dataset used to train Prikshit7766/bert-base-uncased-emotion