Defining and Explorting the Intelligence Space
- URL: http://arxiv.org/abs/2306.06499v2
- Date: Fri, 16 Jun 2023 19:04:05 GMT
- Title: Defining and Explorting the Intelligence Space
- Authors: Paul S. Rosenbloom
- Abstract summary: This article lays out a cascade of definitions that induces both a nested hierarchy of three levels of intelligence and a wider-ranging space that is built around them and approximations to them.
Within this intelligence space, regions are identified that correspond to both natural -- most particularly, human -- intelligence and artificial intelligence (AI)
These definitions are then exploited in early explorations of four more advanced, and likely more controversial, topics: the singularity, generative AI, ethics, and intellectual property.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Intelligence is a difficult concept to define, despite many attempts at doing
so. Rather than trying to settle on a single definition, this article
introduces a broad perspective on what intelligence is, by laying out a cascade
of definitions that induces both a nested hierarchy of three levels of
intelligence and a wider-ranging space that is built around them and
approximations to them. Within this intelligence space, regions are identified
that correspond to both natural -- most particularly, human -- intelligence and
artificial intelligence (AI), along with the crossover notion of humanlike
intelligence. These definitions are then exploited in early explorations of
four more advanced, and likely more controversial, topics: the singularity,
generative AI, ethics, and intellectual property.
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