The field of artificial intelligence (AI) is devoted to the creation of artificial decision-makers that can perform (at least) on par with the human counterparts on a domain of interest. Unlike the agents in traditional AI, the agents in artificial general intelligence (AGI) are required to replicate human intelligence in almost every domain of interest. Moreover, an AGI agent should be able to achieve this without (virtually any) further changes, retraining, or fine-tuning of the parameters. The real world is non-stationary, non-ergodic, and non-Markovian: we, humans, can neither revisit our past nor are the most recent observations sufficient statistics. Yet, we excel at a variety of complex tasks. Many of these tasks require longterm planning. We can associate this success to our natural faculty to abstract away task-irrelevant information from our overwhelming sensory experience. We make task-specific mental models of the world without much effort. Due to this ability to abstract, we can plan on a significantly compact representation of a task without much loss of performance. Not only this, we also abstract our actions to produce high-level plans: the level of action-abstraction can be anywhere between small muscle movements to a mental notion of "doing an action". It is natural to assume that any AGI agent competing with humans (at every plausible domain) should also have these abilities to abstract its experiences and actions. This thesis is an inquiry into the existence of such abstractions which aid efficient planing for a wide range of domains, and most importantly, these abstractions come with some optimality guarantees.
翻译:人工智能领域(AI)致力于创造能够(至少)在感兴趣的领域与人类同行同等发挥(至少)同等作用的人工决策者。与传统AI的代理人不同,人工一般智能(AGI)的代理人需要在几乎所有感兴趣的领域复制人类情报。此外,人工智能领域(AI)的代理人应当能够在没有(虚拟的)进一步改变、再培训或微调参数的情况下实现这一点。现实世界是非静止的、非遗传的和非抽象的:我们人类既不能重新审视过去,也不能是最新的观察数据。然而,我们擅长各种复杂的任务。其中许多任务都需要长期规划。我们可以将这种成功与自然能力联系起来,以便从我们压倒性的感官经历中抽取与任务有关的信息。我们无需做任何努力就能够把具体任务的精神模式变成世界的心理模型。由于这种抽象的能力,我们可以在不损失很多性能的情况下计划一个相当的抽象的任务表述。我们不仅可以将我们的行动抽象地总结为制定高层次的计划:这种援助计划的水平是需要长期规划的。我们可以将这种运动的自然空间与任何层次的行动经验联系起来。