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自动驾驶式规划?关联对主动控制的作用。

Planning on Autopilot? Associative Contributions to Proactive Control.

作者信息

Prieto Illeana, Tran Dominic M D, Livesey Evan J

机构信息

The University of Sydney, Australia.

The University of Sydney, Australia.

出版信息

Cognition. 2023 Feb;231:105321. doi: 10.1016/j.cognition.2022.105321. Epub 2022 Nov 16.

Abstract

Proactive cognitive control is thought to rely on the active maintenance of goals or contextual information in working memory. It is often measured using the AX-CPT, in which antecedent cues (A/B) are used to proactively prepare a response to a subsequently-presented probe (X/Y). Although control in this task purportedly requires active maintenance of information in working memory, it also provides conditions in which learning the contingencies between relevant events could influence performance via associative learning. We tested this hypothesis using a dot-pattern expectancy version of the AX-CPT whereby a set of new rules (test phase) for responding changed the control operations required for some previously trained cues, while keeping the operations the same for others, allowing us to measure associative interference. We also tested the relationship between associative interference and working memory capacity (operation span; Experiments 1-3) and tested the effect of applying working memory load during the initial acquisition period (Experiment 2) and during the test phase (Experiment 3). We found robust evidence of interference after the rule change based on previously learnt contingencies, suggesting that learnt contingencies come to influence proactive planning, even when they are task-irrelevant. This associative effect had no relationship with working memory capacity or load, based on a load manipulation commonly used in executive control tasks. The findings suggest that proactive control does not always require active maintenance of current goals and environmental cues in working memory. Instead, proactive control may run on autopilot if the individual can rely upon stable relationships in the environment to trigger planning and preparation. SIGNIFICANCE: Navigating daily life requires us to anticipate future events and plan our thoughts and actions accordingly to achieve our goals. This forward planning, or proactive control, is thought to be a resource-intensive and metabolically costly process that recruits higher-order cognitive functions, such as working memory, where relevant thoughts and actions have to be maintained online. The current study challenged this notion by finding that proactive control can be incrementally relegated to simpler processes based on one's learning of stable relationships in the environment, thereby reducing the need to actively maintain information online. Individuals can come to rely on underlying contingencies in stimuli associated with proactive control, even when it is detrimental to their goals.

摘要

前瞻性认知控制被认为依赖于工作记忆中目标或情境信息的主动维持。它通常使用AX-CPT进行测量,其中先行线索(A/B)用于前瞻性地准备对随后呈现的探测刺激(X/Y)的反应。尽管此任务中的控制据称需要在工作记忆中主动维持信息,但它也提供了这样的条件,即学习相关事件之间的偶然性可能通过联想学习影响表现。我们使用AX-CPT的点模式预期版本测试了这一假设,即一组新的反应规则(测试阶段)改变了一些先前训练线索所需的控制操作,而其他线索的操作保持不变,从而使我们能够测量联想干扰。我们还测试了联想干扰与工作记忆容量(操作广度;实验1-3)之间的关系,并测试了在初始习得期(实验2)和测试阶段(实验3)施加工作记忆负荷的效果。我们发现,基于先前学习的偶然性,在规则改变后存在有力的干扰证据,这表明即使学习到的偶然性与任务无关,它们也会开始影响前瞻性规划。基于执行控制任务中常用的负荷操纵,这种联想效应与工作记忆容量或负荷无关。研究结果表明,前瞻性控制并不总是需要在工作记忆中主动维持当前目标和环境线索。相反,如果个体能够依靠环境中的稳定关系来触发规划和准备,前瞻性控制可能会自动运行。意义:在日常生活中导航需要我们预测未来事件,并相应地规划我们的思想和行动以实现目标。这种前瞻性规划,即前瞻性控制,被认为是一个资源密集型且代谢成本高昂的过程,它需要调用高阶认知功能,如工作记忆,在其中相关的思想和行动必须在线维持。当前的研究对这一观点提出了挑战,发现前瞻性控制可以根据个体对环境中稳定关系的学习逐步降级为更简单的过程,从而减少在线主动维持信息的需求。即使这对他们的目标不利,个体也可能开始依赖与前瞻性控制相关的刺激中的潜在偶然性。

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