Liviu Petrisor Dinu

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1paper

1 Paper

CLMay 18, 2024
Automated Text Identification Using CNN and Training Dynamics

Claudiu Creanga, Liviu Petrisor Dinu

We used Data Maps to model and characterize the AuTexTification dataset. This provides insights about the behaviour of individual samples during training across epochs (training dynamics). We characterized the samples across 3 dimensions: confidence, variability and correctness. This shows the presence of 3 regions: easy-to-learn, ambiguous and hard-to-learn examples. We used a classic CNN architecture and found out that training the model only on a subset of ambiguous examples improves the model's out-of-distribution generalization.