4.2 Article

Software Social Organisms: Implications for Measuring AI Progress

Journal

AI MAGAZINE
Volume 37, Issue 1, Pages 85-90

Publisher

AMER ASSOC ARTIFICIAL INTELL
DOI: 10.1609/aimag.v37i1.2648

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Funding

  1. Socio-Cognitive Architectures and the Machine Learning, Reasoning, and Intelligence Programs of the Office of Naval Research
  2. Computational and Machine Intelligence Program of the Air Force Office of Scientific Research

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In this article I argue that achieving human-level AI is equivalent to learning how to create sufficiently smart software social organisms. This implies that no single test will be sufficient to measure progress. Instead, evaluations should be organized around showing increasing abilities to participate in our culture, as apprentices. This provides multiple dimensions within which progress can be measured, including how well different interaction modalities can be used, what range of domains can be tackled, what human-normed levels of knowledge they are able to acquire, as well as others. I begin by motivating the idea of software social organisms, drawing on ideas from other areas of cognitive science, and provide an analysis of the substrate capabilities that are needed in social organisms in terms closer to what is needed for computational modeling. Finally, the implications for evaluation are discussed.

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