Department of Psychology, Stanford University, Stanford, California, United States of America.
PLoS Comput Biol. 2022 Jun 16;18(6):e1009553. doi: 10.1371/journal.pcbi.1009553. eCollection 2022 Jun.
When we plan for long-range goals, proximal information cannot be exploited in a blindly myopic way, as relevant future information must also be considered. But when a subgoal must be resolved first, irrelevant future information should not interfere with the processing of more proximal, subgoal-relevant information. We explore the idea that decision making in both situations relies on the flexible modulation of the degree to which different pieces of information under consideration are weighted, rather than explicitly decomposing a problem into smaller parts and solving each part independently. We asked participants to find the shortest goal-reaching paths in mazes and modeled their initial path choices as a noisy, weighted information integration process. In a base task where choosing the optimal initial path required weighting starting-point and goal-proximal factors equally, participants did take both constraints into account, with participants who made more accurate choices tending to exhibit more balanced weighting. The base task was then embedded as an initial subtask in a larger maze, where the same two factors constrained the optimal path to a subgoal, and the final goal position was irrelevant to the initial path choice. In this more complex task, participants' choices reflected predominant consideration of the subgoal-relevant constraints, but also some influence of the initially-irrelevant final goal. More accurate participants placed much less weight on the optimality-irrelevant goal and again tended to weight the two initially-relevant constraints more equally. These findings suggest that humans may rely on a graded, task-sensitive weighting of multiple constraints to generate approximately optimal decision outcomes in both hierarchical and non-hierarchical goal-directed tasks.
当我们规划长期目标时,不能盲目地利用近端信息,因为还必须考虑相关的未来信息。但是,当必须首先解决子目标时,不相关的未来信息不应干扰更接近、与子目标相关的信息的处理。我们探讨了这样一种观点,即这两种情况下的决策都依赖于不同考虑因素的权重的灵活调节,而不是将问题明确分解为更小的部分并独立解决每个部分。我们要求参与者在迷宫中找到最短的目标达成路径,并将他们的初始路径选择建模为一个嘈杂的、加权的信息整合过程。在一个基本任务中,选择最优的初始路径需要平等地权衡起点和目标近端因素,参与者确实考虑了这两个约束,更准确的选择的参与者往往表现出更平衡的权重。然后,将基本任务嵌入到一个更大的迷宫中作为初始子任务,在这个更复杂的任务中,相同的两个因素限制了最佳路径到达子目标,而最终目标位置与初始路径选择无关。在这个任务中,参与者的选择反映了对与子目标相关的约束的主要考虑,但也受到最初不相关的最终目标的一些影响。更准确的参与者对不相关的最优目标的权重要小得多,并且再次倾向于更平等地权衡两个最初相关的约束。这些发现表明,人类可能依赖于对多个约束的分级、任务敏感的权重来生成分层和非分层目标导向任务中近似最优的决策结果。