--- base_model : distilbert/distilbert-base-uncased datasets: - arize-ai/ecommerce_reviews_with_language_drift language: - en library_name: transformers pipeline_tag: text-classification --- # Model Description This is a text classification model based on DistilBERT. It has been fine-tuned on the ecommerce_reviews_with_language_drift dataset. ## Intended Use The model is used for classifying product reviews in text format. The probable outputs are 'positive', 'negative' and 'neutral'. ## Training Data The arize-ai/ecommerce_reviews_with_language_drift dataset was used for training. Only the 'text' and 'label' columns were used. The training dataset contains 8k rows out of which 34.1% are labeled 'positive', 33.4 % are labeled 'negative' and 32.5% are labeled 'neutral'. So it is a balanced dataset. ## Evaluation The model was fine tuned based on the F1 score for 50 epochs. The best score obtained was 0.67. ## Example Usage ```python from transformers import pipeline classifier = pipeline("text-classification", model="your-model-identifier") result = classifier("Your example text here") print(result)