Between Progress and Potential Impact of AI: the Neglected Dimensions
June 02, 2018 Β· Declared Dead Β· + Add venue
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Authors
Fernando MartΓnez-Plumed, Shahar Avin, Miles Brundage, Allan Dafoe, Sean Γ hΓigeartaigh, JosΓ© HernΓ‘ndez-Orallo
arXiv ID
1806.00610
Category
cs.AI: Artificial Intelligence
Citations
5
Last Checked
4 months ago
Abstract
We reframe the analysis of progress in AI by incorporating into an overall framework both the task performance of a system, and the time and resource costs incurred in the development and deployment of the system. These costs include: data, expert knowledge, human oversight, software resources, computing cycles, hardware and network facilities, and (what kind of) time. These costs are distributed over the life cycle of the system, and may place differing demands on different developers and users. The multidimensional performance and cost space we present can be collapsed to a single utility metric that measures the value of the system for different stakeholders. Even without a single utility function, AI advances can be generically assessed by whether they expand the Pareto surface. We label these types of costs as neglected dimensions of AI progress, and explore them using four case studies: Alpha* (Go, Chess, and other board games), ALE (Atari games), ImageNet (Image classification) and Virtual Personal Assistants (Siri, Alexa, Cortana, and Google Assistant). This broader model of progress in AI will lead to novel ways of estimating the potential societal use and impact of an AI system, and the establishment of milestones for future progress.
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