Thinking with Video: Video Generation as a Promising Multimodal Reasoning Paradigm

arXiv — cs.CLFriday, November 7, 2025 at 5:00:00 AM
A new study highlights the potential of video generation as a powerful tool for enhancing multimodal reasoning in AI. Unlike static images, videos can capture dynamic processes and continuous changes, addressing the limitations of existing paradigms that separate text and vision. This advancement could lead to more unified and effective AI systems, making it a significant step forward in the field of artificial intelligence.
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