论文标题

通过潜在原因推理解释恐惧灭绝的有效性

Explaining the effectiveness of fear extinction through latent-cause inference

论文作者

Song, Mingyu, Jones, Carolyn E., Monfils, Marie-H., Niv, Yael

论文摘要

获得对厌恶结果预测指标的恐惧反应对于生存至关重要。同时,重要的是要在适应不良的情况下修改这种关联,例如治疗焦虑和创伤相关的疾病。标准灭绝程序可以暂时减少恐惧,但要延迟足够,或者提醒人们厌恶经历,恐惧经常恢复。潜在的原因推理框架通过假设动物学习丰富的环境模型来解释恐惧的回报,在这种环境中,标准灭绝程序触发了新的潜在原因的推理,从而阻止了原始厌恶的厌恶关联。该计算框架以前启发了一种替代的灭绝范式 - 逐渐灭绝 - 确实被证明在减少恐惧的回归方面更有效。但是,原始框架不足以解释实验中看到的结果模式。在这里,我们提出了一个正式的模型,以解释逐渐消失在减少自发恢复和恢复效果方面的有效性,与标准灭绝的无效和逐渐逆向控制程序相比。我们通过定量模拟证明,我们的模型可以解释在经验研究中看到的不同灭绝程序之间的定性行为差异。我们验证了添加到潜在原因框架中的几个关键假设的必要性,这些假设暗示了动物学习的潜在一般原则,并为将来的实验提供了新的预测。

Acquiring fear responses to predictors of aversive outcomes is crucial for survival. At the same time, it is important to be able to modify such associations when they are maladaptive, for instance in treating anxiety and trauma-related disorders. Standard extinction procedures can reduce fear temporarily, but with sufficient delay or with reminders of the aversive experience, fear often returns. The latent-cause inference framework explains the return of fear by presuming that animals learn a rich model of the environment, in which the standard extinction procedure triggers the inference of a new latent cause, preventing the unlearning of the original aversive associations. This computational framework had previously inspired an alternative extinction paradigm -- gradual extinction -- which indeed was shown to be more effective in reducing the return of fear. However, the original framework was not sufficient to explain the pattern of results seen in the experiments. Here, we propose a formal model to explain the effectiveness of gradual extinction in reducing spontaneous recovery and reinstatement effects, in contrast to the ineffectiveness of standard extinction and a gradual reverse control procedure. We demonstrate through quantitative simulation that our model can explain qualitative behavioral differences across different extinction procedures as seen in the empirical study. We verify the necessity of several key assumptions added to the latent-cause framework, which suggest potential general principles of animal learning and provide novel predictions for future experiments.

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