Datasets:
ArXiv:
License:
{ | |
"name": "22_Sentiment_Analysis_LSTM_IMDb_DL", | |
"query": "Could you help me set up a sentiment analysis project using an LSTM model and the IMDb dataset? Please implement data cleaning in `src/data_loader.py`, including the removal of stop words and punctuation. Use word embeddings to convert the text to a numerical format and save these embeddings under `models/saved_models/`. Then use these embeddings as input of an LSTM model, which should be implemented in `src/model.py`. Save the classification report to `results/metrics/classification_report.txt`. Create a Jupyter Notebook saved as `results/report.ipynb` with the model architecture and training process visualized. Also, save the training loss and accuracy curves to `results/figures/training_curves.png`. Pre-trained embeddings (e.g., Word2Vec or GloVe) are preferred to enhance model performance.", | |
"tags": [ | |
"Natural Language Processing", | |
"Supervised Learning" | |
], | |
"requirements": [ | |
{ | |
"requirement_id": 0, | |
"prerequisites": [], | |
"criteria": "The \"IMDb\" movie reviews dataset is used.", | |
"category": "Dataset or Environment", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 1, | |
"prerequisites": [ | |
0 | |
], | |
"criteria": "Data cleaning is implemented in `src/data_loader.py`, including the removal of stop words and punctuation.", | |
"category": "Data preprocessing and postprocessing", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 2, | |
"prerequisites": [ | |
0, | |
1 | |
], | |
"criteria": "Word embeddings are used to convert text to numerical format and saved under `models/saved_models/`.", | |
"category": "Data preprocessing and postprocessing", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 3, | |
"prerequisites": [], | |
"criteria": "An \"LSTM\" model is used for sentiment analysis and should be implemented in `src/model.py`.", | |
"category": "Machine Learning Method", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 4, | |
"prerequisites": [ | |
2, | |
3 | |
], | |
"criteria": "A classification report is saved as `results/metrics/classification_report.txt`.", | |
"category": "Performance Metrics", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 5, | |
"prerequisites": [ | |
2, | |
3 | |
], | |
"criteria": "A Jupyter Notebook containing the model architecture and training process visualization is generated and saved as `results/report.ipynb`.", | |
"category": "Visualization", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 6, | |
"prerequisites": [ | |
2, | |
3 | |
], | |
"criteria": "Training loss and accuracy curves are generated and saved as `results/figures/training_curves.png`.", | |
"category": "Visualization", | |
"satisfied": null | |
} | |
], | |
"preferences": [ | |
{ | |
"preference_id": 0, | |
"criteria": "The word embeddings should be pre-trained (e.g., Word2Vec or GloVe) to leverage existing semantic knowledge.", | |
"satisfied": null | |
}, | |
{ | |
"preference_id": 1, | |
"criteria": "The Jupyter Notebook should be well-documented, making it easy for others to understand the model architecture and training process.", | |
"satisfied": null | |
} | |
], | |
"is_kaggle_api_needed": false, | |
"is_training_needed": true, | |
"is_web_navigation_needed": false | |
} |