--- license: apache-2.0 datasets: - Lowerated/lm6-movies-reviews-aspects language: - en metrics: - accuracy pipeline_tag: text-classification tags: - movies - reviews - lm6 - ai - rating --- # Lowerated/lm6-movie-aspect-extraction-bert ## Model Details **Model Name:** Lowerated/lm6-movie-aspect-extraction-bert **Model Type:** Aspects Extraction from Text **Language:** English **Framework:** PyTorch **License:** Apache 2.0 ## Model Description Lowerated/lm6-movie-aspect-extraction-bert is a bert-base-uncased model fine-tuned for aspects extraction from IMDb movie reviews. The model is designed to detect aspects of filmmaking: Cinematography, Direction, Story, Characters, Production Design, Unique Concept, and Emotions. ## Dataset **Dataset Name:** Lowerated/imdb-reviews-rated **Dataset URL:** [IMDb Reviews Rated](https://huggingface.co/datasets/LOWERATED/imdb-reviews-rated) **Dataset Description:** The dataset contains IMDb movie reviews with sentiment scores for seven aspects of filmmaking. ## Usage for Rating a Movie Install lowerated: ``` pip install lowerated ``` Now, you can use it like this: ```python from lowerated.rate.entity import Entity # Example usage if __name__ == "__main__": some_movie_reviews = [ "bad movie!", "worse than other movies.", "bad.", "best movie", "very good movie", "the cinematography was insane", "story was so beautiful", "the emotional element was missing but cinematography was great", "didn't feel a thing watching this", "oooof, eliot and jessie were so good. the casting was the best", "yo who designed the set, that was really good", "such stories are rare to find" ] # Create entity object (loads the whole pipeline) # list of aspects. ('Cinematography', 'Direction', 'Story', 'Characters', 'Production Design', 'Unique Concept', 'Emotions') entity = Entity(name="Movie") rating = entity.rate(reviews=some_movie_reviews) print("LM6: ", rating["LM6"]) ``` ## Usage of Model ```python import torch from transformers import DebertaV2ForSequenceClassification, DebertaV2Tokenizer # Load the fine-tuned model and tokenizer model = DebertaV2ForSequenceClassification.from_pretrained('Lowerated/deberta-v3-lm6') tokenizer = DebertaV2Tokenizer.from_pretrained('Lowerated/deberta-v3-lm6') # Ensure the model is in evaluation mode model.eval() # Define the label mapping label_columns = ['Cinematography', 'Direction', 'Story', 'Characters', 'Production Design', 'Unique Concept', 'Emotions'] # Function for predicting sentiment scores def predict_sentiment(review): # Tokenize the input review inputs = tokenizer(review, return_tensors='pt', truncation=True, padding=True) # Disable gradient calculations for inference with torch.no_grad(): # Get model outputs outputs = model(**inputs) # Get the prediction logits predictions = outputs.logits.squeeze().detach().numpy() return predictions # Function to print predictions with labels def print_predictions(review, predictions): print(f"Review: {review}") for label, score in zip(label_columns, predictions): print(f"{label}: {score:.2f}") review = "The cinematography was stunning, but the story was weak." predictions = predict_sentiment(review) print_predictions(review, predictions) ``` ## Performance ```json { 'eval_loss': 0.04379426687955856, 'eval_model_preparation_time': 0.0016, 'eval_accuracy': 0.9845067801235796, 'eval_f1': 0.7419, 'eval_precision': 0.6831499999999999, 'eval_recall': 0.86185, 'eval_runtime': 2014.0076, 'eval_samples_per_second': 29.451, 'eval_steps_per_second': 3.682 } ``` ## Example: ``` original review: the story was amazing but the cinematography wasn't it Cinematography ["the cinematography wasn't"] Direction [] Story ['the story was amazing'] Characters [] Production Design [] Unique Concept [] Emotions [] ``` ## Intended Use This model is intended for rating of movies across seven aspects of filmmaking. It can be used to provide a more nuanced understanding of viewer opinions and improve movie rating systems. ## Limitations While the model performs well on the evaluation dataset, its performance may vary on different datasets. Continuous monitoring and retraining with diverse data are recommended to maintain and improve its accuracy. ## Future Work Future improvements could focus on exploring alternative methods for handling neutral values, investigating advanced techniques for addressing missing ratings, enhancing sentiment analysis methods, and expanding the range of aspects analyzed. ## Citation If you use this model in your research, please cite it as follows: ```bibtex @model{lm6-movie-aspect-extraction-bert, author = {LOWERATED}, title = {lm6-movie-aspect-extraction-bert}, year = {2024}, url = {https://hf.xwall.us.kgLowerated/lm6-movie-aspect-extraction-bert}, } ```