HALC
Object hallucination reducer
An implementation of an object hallucination reduction method using a PyTorch framework and various decoding algorithms.
[ICML 2024] Official implementation for "HALC: Object Hallucination Reduction via Adaptive Focal-Contrast Decoding"
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Language: Python
last commit: 3 months ago hallucinationslarge-language-modelslvlms
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