AICLLGLONov 8, 2024

Quantifying artificial intelligence through algorithmic generalization

arXiv:2411.05943v26 citationsh-index: 28Nat Mach Intell
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of interpretable and reliable AI technology for researchers and developers, though it is incremental as it applies existing theoretical tools to a new context.

The authors tackled the lack of a theoretical framework to quantify algorithmic reasoning in AI systems by adopting algebraic circuit complexity from computational complexity theory, resulting in a formalized approach to study algorithmic generalization without specifying concrete numerical results.

The rapid development of artificial intelligence (AI) systems has created an urgent need for their scientific quantification. While their fluency across a variety of domains is impressive, AI systems fall short on tests requiring algorithmic reasoning -- a glaring limitation given the necessity for interpretable and reliable technology. Despite a surge of reasoning benchmarks emerging from the academic community, no theoretical framework exists to quantify algorithmic reasoning in AI systems. Here, we adopt a framework from computational complexity theory to quantify algorithmic generalization using algebraic expressions: algebraic circuit complexity. Algebraic circuit complexity theory -- the study of algebraic expressions as circuit models -- is a natural framework to study the complexity of algorithmic computation. Algebraic circuit complexity enables the study of generalization by defining benchmarks in terms of the computational requirements to solve a problem. Moreover, algebraic circuits are generic mathematical objects; an arbitrarily large number of samples can be generated for a specified circuit, making it an ideal experimental sandbox for the data-hungry models that are used today. In this Perspective, we adopt tools from algebraic circuit complexity, apply them to formalize a science of algorithmic generalization, and address key challenges for its successful application to AI science.

Foundations

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