Constructing Deep Concepts through Shallow Search

Bonan Zhao, Christopher G Lucas, Neil R. Bramley
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Abstract

We propose bootstrap learning as a computational account for why human learning is modular and incremental, and identify key components of bootstrap learning that allow artificial systems to learn more like people. Originated from developmental psychology, bootstrap learning refers to people's ability to extend and repurpose existing knowledge to create new and more powerful ideas. We view bootstrap learning as a solution of how cognitively-bounded reasoners grasp complex environmental dynamics that are far beyond their initial capacity, by searching ‘locally’ and recursively to extend their existing knowledge. Drawing from techniques of Bayesian library learning and resource rational analysis, we propose a computational modeling framework that achieves human-like bootstrap learning performance in inductive conceptual inference. In addition, we demonstrate modeling and behavioral evidence that highlights the double-edged sword of bootstrap learning, such that people processing the same information in different batch orders could induce drastically different causal conclusions and generalizations, as a result of the different sub-concepts they construct in earlier stages of learning.
通过浅层搜索构建深层概念
我们提出了引导式学习(bootstrap learning)这一计算方法,以解释为什么人类的学习是模块化和渐进式的,并确定了引导式学习的关键组成部分,使人工系统能够像人类一样学习。引导式学习源于发展心理学,指的是人们扩展和重新利用现有知识以创造更强大的新想法的能力。我们认为,引导式学习可以解决认知受限的推理者如何通过 "局部 "搜索和递归扩展现有知识,从而掌握远远超出其初始能力的复杂环境动态。借鉴贝叶斯库学习和资源合理性分析技术,我们提出了一种计算建模框架,它能在归纳概念推理中实现与人类类似的引导学习性能。此外,我们还展示了建模和行为证据,这些证据凸显了引导式学习的双刃剑作用,即人们在不同的批处理顺序中处理相同的信息时,由于在学习的早期阶段构建了不同的子概念,可能会得出截然不同的因果结论和概括。
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