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A new framework for modeling decisions about changing information: The Piecewise Linear Ballistic Accumulator model

机译:用于建模有关更改信息的决策的新框架:分段线性弹道累加器模型

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摘要

In the real world, decision making processes must be able to integrate non-stationary information that changes systematically while the decision is in progress. Although theories of decision making have traditionally been applied to paradigms with stationary information, non-stationary stimuli are now of increasing theoretical interest. We use a random-dot motion paradigm along with cognitive modeling to investigate how the decision process is updated when a stimulus changes. Participants viewed a cloud of moving dots, where the motion switched directions midway through some trials, and were asked to determine the direction of motion. Behavioral results revealed a strong delay effect: after presentation of the initial motion direction there is a substantial time delay before the changed motion information is integrated into the decision process. To further investigate the underlying changes in the decision process, we developed a Piecewise Linear Ballistic Accumulator model (PLBA). The PLBA is efficient to simulate, enabling it to be fit to participant choice and response-time distribution data in a hierarchal modeling framework using a non-parametric approximate Bayesian algorithm. Consistent with behavioral results, PLBA fits confirmed the presence of a long delay between presentation and integration of new stimulus information, but did not support increased response caution in reaction to the change. We also found the decision process was not veridical, as symmetric stimulus change had an asymmetric effect on the rate of evidence accumulation. Thus, the perceptual decision process was slow to react to, and underestimated, new contrary motion information.
机译:在现实世界中,决策过程必须能够整合在决策过程中系统发生变化的非平稳信息。尽管决策理论传统上已应用于具有固定信息的范式,但非平稳刺激现在在理论上越来越受到关注。我们使用随机点运动范例以及认知建模来研究刺激变化时如何更新决策过程。参加者查看了移动点的云,在一些试验中,运动的方向切换了方向,并被要求确定运动的方向。行为结果显示了强烈的延迟效果:在显示初始运动方向后,在将更改的运动信息集成到决策过程之前,存在大量的时间延迟。为了进一步研究决策过程中的潜在变化,我们开发了分段线性弹道累加器模型(PLBA)。 PLBA可以高效地进行仿真,使其能够使用非参数近似贝叶斯算法在层次建模框架中适合参与者的选择和响应时间分布数据。与行为结果一致,PLBA适合证实了在呈现和整合新的刺激信息之间存在较长的延迟,但不支持对更改的反应谨慎。我们还发现决策过程不是垂直的,因为对称的刺激变化对证据积累的速率具有非对称的影响。因此,知觉决策过程对新的反向运动信息的反应缓慢且被低估了。

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