license: apache-2.0
datasets:
- AyoubChLin/CNN_News_Articles_2011-2022
metrics:
- accuracy
- f1
pipeline_tag: zero-shot-classification
language:
- en
tags:
- zero shot
- text classification
- news classification
Huggingface Model: BART-MNLI-ZeroShot-Text-Classification
This is a Huggingface model fine-tuned on the CNN news dataset for zero-shot text classification task using DistilBART-MNLI. The model achieved an f1 score of 93% and an accuracy of 93% on the CNN test dataset with a maximum length of 128 tokens.
Authors
This work was done by CHERGUELAINE Ayoub & BOUBEKRI Faycal
Model Architecture
The model architecture is based on the DistilBART-MNLI transformer model. DistilBART is a smaller and faster version of BART that is pre-trained on a large corpus of text and fine-tuned on downstream natural language processing tasks.
Dataset
The CNN news dataset was used for fine-tuning the model. This dataset contains news articles from the CNN website and is labeled into 6 categories, including politics, health, entertainment, tech, travel, world, and sports.
Fine-tuning Parameters
The model was fine-tuned for 1 epoch on a maximum length of 256 tokens. The training took approximately 6 hours to complete.
Evaluation Metrics
The model achieved an f1 score of 93% and an accuracy of 93% on the CNN test dataset with a maximum length of 128 tokens.
Usage
The model can be used for zero-shot text classification tasks on news articles. It can be accessed via the Huggingface Transformers library using the following code:
from transformers import pipeline, AutoTokenizer, AutoModelForSequenceClassification
tokenizer = AutoTokenizer.from_pretrained("AyoubChLin/DistilBart_cnn_zeroShot")
model = AutoModelForSequenceClassification.from_pretrained("AyoubChLin/DistilBart_cnn_zeroShot")
classifier = pipeline(
"zero-shot-classification",
model=model,
tokenizer=tokenizer,
device=0
)
Acknowledgments
We would like to acknowledge the Huggingface team for their open-source implementation of transformer models and the CNN news dataset for providing the labeled dataset for fine-tuning.