How Psychological Learning Paradigms Shaped and Constrained Artificial Intelligence
arXiv cs.CL / 3/20/2026
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Key Points
- The paper surveys how psychology's learning paradigms shaped AI, tracing behaviorism to reinforcement learning, cognitivism to deep learning, and constructivism to curriculum learning and compositional approaches.
- It argues that each paradigm inherits the strengths and structural limitations of its inspiration, noting RL's difficulty with internal knowledge structure and deep learning's opaque representations.
- The authors propose ReSynth, a trimodular framework that separates reasoning (Intellect), purpose (Identity), and knowledge (Memory) as architecturally independent components to improve adaptability and systematic behavior.
- It also discusses cross-cultural interpretations of rote learning, suggesting Eastern conceptions of memorization as a structured precursor to understanding could bridge psychology and AI methodology.
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