AIMay 16

Learning to Learn from Multimodal Experience

arXiv:2605.1685797.8
Predicted impact top 5% in AI · last 90 daysOriginality Highly original
AI Analysis

This work addresses the challenge of memory design in multimodal experience-driven learning for AI agents, offering a more flexible approach that adapts to task demands.

The paper proposes a new paradigm for experience-driven learning where memory design is adaptive and learnable rather than fixed, enabling agents to dynamically structure multimodal experience. Experiments show substantial improvements in agent performance and generalization across multimodal tasks.

Experience-driven learning has emerged as a promising paradigm for enabling agents to improve from interaction trajectories by accumulating and reusing past experience. However, existing approaches are predominantly developed in textual settings and rely on manually designed memory schemas, limiting their applicability to multimodal environments. In real-world scenarios, experience is inherently multimodal, involving heterogeneous signals across perception, reasoning, and action, which makes effective memory design significantly more challenging. In particular, the optimal way to structure and utilize multimodal experience is highly task-dependent and evolves over time, rendering fixed memory designs insufficient. In this work, we propose a new paradigm, learning to learn from multimodal experience, which shifts memory design from a predefined component to an adaptive and learnable process. Our framework enables agents to dynamically construct, organize, and utilize memory based on task requirements and interaction history, effectively learning how to structure experience for improved performance. Experiments demonstrate that adaptive memory design substantially enhances agent performance and generalization across multimodal tasks, highlighting the critical role of learning memory mechanisms in experience-driven learning.

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