Nature's Insight: A Novel Framework and Comprehensive Analysis of Agentic Reasoning Through the Lens of Neuroscience
Zinan Liu, Haoran Li, Jingyi Lu, Gaoyuan Ma, Xu Hong, Giovanni Iacca, Arvind Kumar, Shaojun Tang, Lin Wang

TL;DR
This paper introduces a neuroscience-inspired framework for agentic reasoning in AI, analyzing existing methods and proposing new biologically grounded approaches to enhance autonomous decision-making.
Contribution
It presents a unified, neuroscience-based framework for agentic reasoning, classifies existing AI methods, and suggests future neural-inspired reasoning techniques.
Findings
Classified AI reasoning methods using the new framework
Identified limitations of current approaches
Proposed neural-inspired reasoning directions
Abstract
Autonomous AI is no longer a hard-to-reach concept, it enables the agents to move beyond executing tasks to independently addressing complex problems, adapting to change while handling the uncertainty of the environment. However, what makes the agents truly autonomous? It is agentic reasoning, that is crucial for foundation models to develop symbolic logic, statistical correlations, or large-scale pattern recognition to process information, draw inferences, and make decisions. However, it remains unclear why and how existing agentic reasoning approaches work, in comparison to biological reasoning, which instead is deeply rooted in neural mechanisms involving hierarchical cognition, multimodal integration, and dynamic interactions. In this work, we propose a novel neuroscience-inspired framework for agentic reasoning. Grounded in three neuroscience-based definitions and supported by…
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Taxonomy
TopicsAction Observation and Synchronization · Multimodal Machine Learning Applications · Embodied and Extended Cognition
