Generating Samples to Question Trained Models
Kıral, E. Mehmet, Aydın, Nurşen, Birbil, Ş. İlker
–arXiv.org Artificial Intelligence
There is a growing need for investigating how machine learning models operate. With this work, we aim to understand trained machine learning models by questioning their data preferences. We propose a mathematical framework that allows us to probe trained models and identify their preferred samples in various scenarios including prediction-risky, parameter-sensitive, or model-contrastive samples. To showcase our framework, we pose these queries to a range of models trained on a range of classification and regression tasks, and receive answers in the form of generated data.
arXiv.org Artificial Intelligence
Feb-10-2025
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