AINeutralarXiv โ CS AI ยท 5d ago7/104
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When Bias Meets Trainability: Connecting Theories of Initialization
New research connects initial guessing bias in untrained deep neural networks to established mean field theories, proving that optimal initialization for learning requires systematic bias toward specific classes rather than neutral initialization. The study demonstrates that efficient training is fundamentally linked to architectural prejudices present before data exposure.