AI systems have seen dramatic advancement in recent years, bringing many applications that pervade our everyday life. However, we are still mostly seeing instances of narrow AI: many of these recent developments are typically focused on a very limited set of competencies and goals, e.g., image interpretation, natural language processing, classification, prediction, and many others. Moreover, while these successes can be accredited to improved algorithms and techniques, they are also tightly linked to the availability of huge datasets and computational power. State-of-the-art AI still lacks many capabilities that would naturally be included in a notion of (human) intelligence. We argue that a better study of the mechanisms that allow humans to have these capabilities can help us understand how to imbue AI systems with these competencies. We focus especially on D. Kahneman's theory of thinking fast and slow, and we propose a multi-agent AI architecture where incoming problems are solved by either system 1 (or "fast") agents, that react by exploiting only past experience, or by system 2 (or "slow") agents, that are deliberately activated when there is the need to reason and search for optimal solutions beyond what is expected from the system 1 agent. Both kinds of agents are supported by a model of the world, containing domain knowledge about the environment, and a model of "self", containing information about past actions of the system and solvers' skills.
翻译:近些年来,大赦国际系统取得了巨大进步,带来了许多贯穿我们日常生活的应用。然而,我们仍然大都看到一些狭隘的大赦国际的例子:许多最近的事态发展一般都集中在一套非常有限的能力和目标上,例如图像判读、自然语言处理、分类、预测等。此外,虽然这些成功可以被认可用于改进算法和技术,但它们也与巨大的数据集和计算能力的可用性紧密相连。最先进的大赦国际仍然缺乏许多能力,而这些能力自然会被纳入(人)情报的概念中。我们认为,更好地研究允许人类拥有这些能力的机制可以帮助我们了解如何用这些能力来灌输大赦国际系统。我们特别侧重于D.Kahneman的思维理论,即快速和缓慢,我们提出一个多代理人的AI结构,即通过系统1(或“快速”)代理来解决出现的问题,仅利用过去的经验,或由系统2(或“低级”代理商作出反应。当需要理性和寻找最佳环境解决方案时,我们有意激活的机制可以帮助我们了解如何用这些能力。我们特别侧重于D.K.Kahneman的思维理论和缓慢,我们建议建立一个多代理人的人工的人工智能结构结构结构,其中只包括了一种由一手法的模型支持的模型。