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Modeling Internal Cognition

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The Silent Thought: Modeling Internal Cognition in Full-Duplex Spoken Dialogue Models via Latent Reasoning

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Toward AI That Understands Self and Others: A World-Model Theory of Cognitive Diversity and Alignment

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