Verbalized Algorithms

arXiv — cs.CLTuesday, November 4, 2025 at 5:00:00 AM

Verbalized Algorithms

A new approach called verbalized algorithms (VAs) is being proposed to enhance the reliability of large language models (LLMs) in reasoning tasks. Instead of relying on one-shot queries, VAs break down complex tasks into simpler operations that LLMs can handle more effectively. This method not only aims to improve the accuracy of responses but also leverages established algorithms, making it a significant step forward in the field of artificial intelligence. By focusing on manageable tasks, VAs could lead to more dependable outcomes in various applications, highlighting the importance of combining classical methods with modern AI.
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