Gros Claudius
Institute for Theoretical Physics, Goethe University Frankfurt am Main, Frankfurt, Germany.
Front Comput Neurosci. 2021 Dec 14;15:726247. doi: 10.3389/fncom.2021.726247. eCollection 2021.
Biological as well as advanced artificial intelligences (AIs) need to decide which goals to pursue. We review nature's solution to the time allocation problem, which is based on a continuously readjusted categorical weighting mechanism we experience introspectively as emotions. One observes phylogenetically that the available number of emotional states increases hand in hand with the cognitive capabilities of animals and that raising levels of intelligence entail ever larger sets of behavioral options. Our ability to experience a multitude of potentially conflicting feelings is in this view not a leftover of a more primitive heritage, but a generic mechanism for attributing values to behavioral options that can not be specified at birth. In this view, emotions are essential for understanding the mind. For concreteness, we propose and discuss a framework which mimics emotions on a functional level. Based on time allocation via emotional stationarity (TAES), emotions are implemented as abstract criteria, such as satisfaction, challenge and boredom, which serve to evaluate activities that have been carried out. The resulting timeline of experienced emotions is compared with the "character" of the agent, which is defined in terms of a preferred distribution of emotional states. The long-term goal of the agent, to align experience with character, is achieved by optimizing the frequency for selecting individual tasks. Upon optimization, the statistics of emotion experience becomes stationary.
生物智能以及先进的人工智能都需要决定追求哪些目标。我们回顾了自然界解决时间分配问题的方法,该方法基于一种我们通过内省体验为情感的持续调整的分类加权机制。从系统发育的角度可以观察到,情感状态的可用数量与动物的认知能力同步增加,而且智力水平的提高需要更多的行为选择。从这个角度来看,我们体验多种潜在冲突情感的能力并非更原始遗产的遗留物,而是一种为出生时无法确定的行为选择赋予价值的通用机制。从这个角度来看,情感对于理解心智至关重要。具体而言,我们提出并讨论了一个在功能层面模拟情感的框架。基于情感平稳性时间分配(TAES),情感被实现为抽象标准,如满意度、挑战性和无聊感,用于评估已执行的活动。将由此产生的情感体验时间线与智能体的“性格”进行比较,智能体的“性格”是根据情感状态的偏好分布来定义的。智能体的长期目标,即使体验与性格相符,是通过优化选择单个任务的频率来实现的。经过优化后,情感体验的统计数据变得平稳。