Lihu Chen - Exploring Factuality and Interpretability in LLMs: Confidence Estimation and Key Neuron Analysis
- Date: 16 décembre 2024 à 13h
- Salle: 65-66 304
Lihu Chen - Exploring Factuality and Interpretability in LLMs: Confidence Estimation and Key Neuron Analysis
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Marc Lafon - GalLoP: Learning Global and Local Prompts for Vision-Language Models
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