Causality in the human niche: lessons for machine learning
Richard D. Lange, Konrad P. Kording

TL;DR
This paper explores how human causal cognition differs from traditional models like SCMs and argues that understanding these differences can inspire more effective and human-like causal reasoning in machine learning systems.
Contribution
It highlights the limitations of SCM frameworks in capturing human causal reasoning and emphasizes the importance of modeling causal analogies and generalization in the human niche.
Findings
Humans generalize causal knowledge across similar objects.
SCMs struggle to represent causal analogies between object types.
Understanding human causal cognition can inform better AI systems.
Abstract
Humans interpret the world around them in terms of cause and effect and communicate their understanding of the world to each other in causal terms. These causal aspects of human cognition are thought to underlie humans' ability to generalize and learn efficiently in new domains, an area where current machine learning systems are weak. Building human-like causal competency into machine learning systems may facilitate the construction of effective and interpretable AI. Indeed, the machine learning community has been importing ideas on causality formalized by the Structural Causal Model (SCM) framework, which provides a rigorous formal language for many aspects of causality and has led to significant advances. However, the SCM framework fails to capture some salient aspects of human causal cognition and has likewise not yet led to advances in machine learning in certain critical areas…
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Taxonomy
TopicsMachine Learning and Data Classification
