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.
翻译:生物和先进的人工智能(AIs)需要决定要追求什么目标。我们审查大自然对于时间分配问题的解决方案,这是建立在不断调整的绝对权重机制基础上的,我们以情感为本体体验。我们从生理上观察到,现有的情感状态数量随着动物的认知能力而增加,而提高智能水平则意味着更多的行为选择。我们体验多种潜在冲突情感的能力,不是更原始的遗产的剩余,而是将价值观归属于行为选择的通用机制,而这种选择在出生时无法具体说明。在这种观点中,情感对于理解思想至关重要。关于具体性,我们提议和讨论一个在功能上模仿情感的框架。根据情感定位(TAES)的时间分配,情绪作为满足、挑战和无聊等抽象的标准被运用,用来评价已经开展的活动。因此,经验丰富的情感的时间安排与代理人的“特征”相比较,根据最理想的频率分配,在最优化的状态下,通过实现个人情感定位,长期目标成为实现的情感状态。