saraestevez
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Update README.md
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README.md
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A value between 0 and 1 is predicted for each signal.
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### How to use
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The model can be used directly with a text-classification pipeline:
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* Batch size = 32
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* Learning rate = 2e-5
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* Epochs = 5
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The optimizer used was AdamW and the loss optimized was binary cross-entropy with class weights proportional to the class imbalance.
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A value between 0 and 1 is predicted for each signal.
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### Intended uses & limitations
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The model was created to be used as a toxicity detector of spanish tweets from Spanish Congress Deputies. If the intended use is other one, for instance; toxicity detection on films reviews, the results won't be reliable and you might look for another model with this concrete purpose.
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### How to use
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The model can be used directly with a text-classification pipeline:
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* Batch size = 32
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* Learning rate = 2e-5
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* Epochs = 5
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* Max length = 64
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The optimizer used was AdamW and the loss optimized was binary cross-entropy with class weights proportional to the class imbalance.
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