深层类比推理作为假说的起源

Mark Blokpoel, T. Wareham, W. Haselager, I. Toni, I.J.E.I. van Rooij
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引用次数: 13

摘要

提出新假设的能力是人类解决问题的重要能力。这种能力对于理解我们所生活的复杂而陌生的世界至关重要。通常,这种能力的特点是对最佳解释的推断——从一组给定的候选假设中选择“最佳”解释。然而,目前尚不清楚这些候选假设的来源。在本文中,我们通过提供当人类产生假设时解决的计算问题的轮廓,为计算解释这些起源做出了贡献。假设的起源,也被称为溯因性,具有七个特征:(1)各向同性,(2)开放性,(3)新颖性,(4)接地性,(5)敏感性,(6)心理现实性,(7)计算可追溯性。在本文中,我们提供了一个计算层面的溯因性理论,它统一了前六个性质,并为计算可溯性的第七个性质奠定了基础。我们推测溯因性最好被看作是一个深度类比推理的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Analogical Inference as the Origin of Hypotheses
The ability to generate novel hypotheses is an important problem-solving capacity of humans. This ability is vital for making sense of the complex and unfamiliar world we live in. Often, this capacity is characterized as an inference to the best explanation - selecting the "best" explanation from a given set of candidate hypotheses. However, it remains unclear where these candidate hypotheses originate from. In this paper we contribute to computationally explaining these origins by providing the contours of the computational problem solved when humans generate hypotheses. The origin of hypotheses, otherwise known as abduction proper, is hallmarked by seven properties: (1) isotropy, (2) open-endedness, (3) novelty, (4) groundedness, (5) sensibility, (6) psychological realism, and (7) computational tractability. In this paper we provide a computational-level theory of abduction proper that unifies the first six of these properties and lays the groundwork for the seventh property of computational tractability. We conjecture that abduction proper is best seen as a process of deep analogical inference.
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