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# Laser Encoder: Sentiment Analysis | |
## Overview | |
This project demonstrates the application of the Laser Encoder tool for creating sentence embeddings in the context of sentiment analysis. The Laser Encoder is used to encode text data, and a sentiment analysis model is trained to predict the sentiment of the text. | |
## Getting Started | |
To run the notebook in Google Colab, click the "Open in Colab" button below: | |
[](https://colab.research.google.com/github/NIXBLACK11/LASER-fork/blob/Sentiment-analysis-laser/tasks/SentimentAnalysis/SentimentAnalysis.ipynb) | |
Also, check out the hugging face space with the button below: | |
[](https://huggingface.co/spaces/NIXBLACK/SentimentAnalysis_LASER_) | |
## Example Usage | |
Run the Example Notebook: | |
Execute the provided Jupyter Notebook SentimentAnalysis.ipynb | |
jupyter notebook SentimentAnalysis.ipynb | |
## Customization | |
- Modify the model architecture, hyperparameters, and training settings in the neural network model section based on your requirements. | |
- Customize the sentiment mapping and handling of unknown sentiments in the data preparation section. | |
## Additional Notes | |
- Feel free to experiment with different models, embeddings, and hyperparameters to optimize performance. | |
- Ensure that the dimensions of embeddings and model inputs are compatible. | |
Adapt the code based on your specific dataset and use case. | |