NENCApr 14

Attention to task structure for cognitive flexibility

arXiv:2604.132816.6h-index: 53
AI Analysis

For researchers in multi-task learning and cognitive science, this work highlights the importance of environmental structure alongside model architecture, though the findings are incremental as they extend known concepts.

The paper investigates how environmental structure (task connectivity and richness) influences cognitive flexibility in multi-task learning. It finds that richer environments improve both generalization and stability, and that graph-theoretic task connectivity strongly modulates these abilities, especially for attention-based models.

Humans and artificial agents must often learn and switch between multiple tasks in dynamic environments. Success in such settings requires cognitive flexibility: the ability to retain prior knowledge (cognitive stability) while also transferring it to novel tasks (cognitive generalization). Cognitive flexibility research has largely focused on the role of model architecture to achieve these complementary goals. However, it is less well understood how the structure of the environment itself influences cognitive flexibility, and how it interacts with model architecture. To address this gap, we design a multi-task learning environment in which tasks are defined by a combination of two cue dimensions, allowing us to characterize the environment with graph-theory methods. We also introduce gating-based (multiplicative) and concatenation-based attention models that can decompose tasks into components and can sequentially allocate attention to them. We compare the attention-based models' performance in the multi-task learning environment to multilayer perceptrons. Generalization and stability are systematically evaluated across environments that vary in richness and task connectivity. We observe that richer environments improve both generalization and stability. In addition, a critical novel observation is that (graph theory based) connectivity between the tasks in the environment strongly modulates both stability and generalization, with especially pronounced benefits for attention-based models. These findings underscore the importance of considering not only cognitive architectures but also environmental structure and their interaction in shaping multi-task learning, generalization, and stability.

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