Department of Computer Science, University of California, Irvine, Irvine, CA 92697, USA.
Information and Systems Sciences Laboratory, HRL Laboratories LLC, Malibu, CA 90265, USA.
Neural Netw. 2020 May;125:56-69. doi: 10.1016/j.neunet.2020.01.031. Epub 2020 Feb 1.
In uncertain domains, the goals are often unknown and need to be predicted by the organism or system. In this paper, contrastive Excitation Backprop (c-EB) was used in two goal-driven perception tasks - one with pairs of noisy MNIST digits and the other with a robot in an action-based attention scenario. The first task included attending to even, odd, low, and high digits, whereas the second task included action goals, such as "eat", "work-on-computer", "read", and "say-hi" that led to attention to objects associated with those actions. The system needed to increase attention to target items and decrease attention to distractor items and background noise. Because the valid goal was unknown, an online learning model based on the cholinergic and noradrenergic neuromodulatory systems was used to predict a noisy goal (expected uncertainty) and re-adapt when the goal changed (unexpected uncertainty). This neurobiologically plausible model demonstrates how neuromodulatory systems can predict goals in uncertain domains and how attentional mechanisms can enhance the perception for that goal.
在不确定的领域中,目标通常是未知的,需要由生物体或系统进行预测。在本文中,对比激励反向传播(c-EB)被用于两个目标驱动的感知任务中 - 一个是带有一对嘈杂 MNIST 数字的任务,另一个是机器人在基于动作的注意力场景中的任务。第一个任务包括关注偶数、奇数、低和高数字,而第二个任务包括动作目标,例如“吃”、“在计算机上工作”、“阅读”和“打招呼”,这些目标导致对与这些动作相关的对象的注意力增加。系统需要增加对目标项目的注意力,减少对干扰项目和背景噪声的注意力。由于有效目标是未知的,因此使用基于胆碱能和去甲肾上腺素能神经调质系统的在线学习模型来预测嘈杂的目标(预期不确定性),并在目标改变时(意外不确定性)重新适应。这个神经生物学上合理的模型展示了神经调质系统如何在不确定的领域中预测目标,以及注意力机制如何增强对该目标的感知。