NCAIJan 13, 2025

Attention when you need

arXiv:2501.07440v211 citationsh-index: 16
Originality Incremental advance
AI Analysis

This work addresses the problem of optimizing attention allocation for efficient task performance in cognitive agents, but it is incremental as it builds on existing experimental data and normative modeling approaches.

The authors tackled the problem of how agents should strategically allocate attention to balance performance benefits against metabolic costs, using a reinforcement learning model of mice in an auditory task, and found that efficient attention involves alternating blocks of high and low attention, with rhythmic high attention in extreme cases.

Being attentive to task-relevant features can improve task performance, but paying attention comes with its own metabolic cost. Therefore, strategic allocation of attention is crucial in performing the task efficiently. This work aims to understand this strategy. Recently, de Gee et al. conducted experiments involving mice performing an auditory sustained attention-value task. This task required the mice to exert attention to identify whether a high-order acoustic feature was present amid the noise. By varying the trial duration and reward magnitude, the task allows us to investigate how an agent should strategically deploy their attention to maximize their benefits and minimize their costs. In our work, we develop a reinforcement learning-based normative model of the mice to understand how it balances attention cost against its benefits. The model is such that at each moment the mice can choose between two levels of attention and decide when to take costly actions that could obtain rewards. Our model suggests that efficient use of attentional resources involves alternating blocks of high attention with blocks of low attention. In the extreme case where the agent disregards sensory input during low attention states, we see that high attention is used rhythmically. Our model provides evidence about how one should deploy attention as a function of task utility, signal statistics, and how attention affects sensory evidence.

Foundations

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