Conceptual abstraction and analogy-making are key abilities underlying humans' abilities to learn, reason, and robustly adapt their knowledge to new domains. Despite of a long history of research on constructing AI systems with these abilities, no current AI system is anywhere close to a capability of forming humanlike abstractions or analogies. This paper reviews the advantages and limitations of several approaches toward this goal, including symbolic methods, deep learning, and probabilistic program induction. The paper concludes with several proposals for designing challenge tasks and evaluation measures in order to make quantifiable and generalizable progress in this area.
翻译:概念抽象和类推是人类学习、理性和强有力地使其知识适应新领域能力的关键能力基础。 尽管用这些能力构建AI系统的研究历史悠久,但目前没有任何AI系统接近于形成人性抽象或类比的能力。本文回顾了实现这一目标的若干方法的优点和局限性,包括象征性方法、深层次学习和概率方案上岗。本文件最后提出了几项建议,旨在设计挑战任务和评估措施,以便在这一领域取得可量化和可概括的进展。