AINCDec 12, 2024

The Parameters of Educability

arXiv:2412.09480v1h-index: 57
Originality Synthesis-oriented
AI Analysis

It addresses the foundational challenge of defining and parameterizing educable systems for both human cognition and AI, but is incremental as it builds on an existing model without presenting new empirical results.

The paper discusses the parameters of the educability model, a computational framework for describing human cognitive capabilities and aspirational machine intelligence, focusing on the decisions involved in constructing such systems and their broader implications.

The educability model is a computational model that has been recently proposed to describe the cognitive capability that makes humans unique among existing biological species on Earth in being able to create advanced civilizations. Educability is defined as a capability for acquiring and applying knowledge. It is intended both to describe human capabilities and, equally, as an aspirational description of what can be usefully realized by machines. While the intention is to have a mathematically well-defined computational model, in constructing an instance of the model there are a number of decisions to make. We call these decisions {\it parameters}. In a standard computer, two parameters are the memory capacity and clock rate. There is no universally optimal choice for either one, or even for their ratio. Similarly, in a standard machine learning system, two parameters are the learning algorithm and the dataset used for training. Again, there are no universally optimal choices known for either. An educable system has many more parameters than either of these two kinds of system. This short paper discusses some of the main parameters of educable systems, and the broader implications of their existence.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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