AIMar 7, 2023

Toward Defining a Domain Complexity Measure Across Domains

arXiv:2303.04141v110 citationsh-index: 20
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of predicting AI system performance in real-world applications for researchers and developers, though it appears incremental as it frames existing concepts rather than presenting a fully developed measure.

The paper tackles the challenge of AI systems transitioning from controlled environments to open-world domains by proposing a framework for a domain-independent measure of domain complexity, distinguishing between intrinsic (agent-independent) and extrinsic (agent- and task-dependent) aspects.

Artificial Intelligence (AI) systems planned for deployment in real-world applications frequently are researched and developed in closed simulation environments where all variables are controlled and known to the simulator or labeled benchmark datasets are used. Transition from these simulators, testbeds, and benchmark datasets to more open-world domains poses significant challenges to AI systems, including significant increases in the complexity of the domain and the inclusion of real-world novelties; the open-world environment contains numerous out-of-distribution elements that are not part in the AI systems' training set. Here, we propose a path to a general, domain-independent measure of domain complexity level. We distinguish two aspects of domain complexity: intrinsic and extrinsic. The intrinsic domain complexity is the complexity that exists by itself without any action or interaction from an AI agent performing a task on that domain. This is an agent-independent aspect of the domain complexity. The extrinsic domain complexity is agent- and task-dependent. Intrinsic and extrinsic elements combined capture the overall complexity of the domain. We frame the components that define and impact domain complexity levels in a domain-independent light. Domain-independent measures of complexity could enable quantitative predictions of the difficulty posed to AI systems when transitioning from one testbed or environment to another, when facing out-of-distribution data in open-world tasks, and when navigating the rapidly expanding solution and search spaces encountered in open-world domains.

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