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arxiv_ai 85% Match Theoretical/Foundational AI Theorists,Researchers in Cognitive Science,Philosophers of AI 1 week ago

The Information-Theoretic Imperative: Compression and the Epistemic Foundations of Intelligence

large-language-models › reasoning
📄 Abstract

Abstract: Existing frameworks converge on the centrality of compression to intelligence but leave underspecified why this process enforces the discovery of causal structure rather than superficial statistical patterns. We introduce a two-level framework to address this gap. The Information-Theoretic Imperative (ITI) establishes that any system persisting in uncertain environments must minimize epistemic entropy through predictive compression: this is the evolutionary "why" linking survival pressure to information-processing demands. The Compression Efficiency Principle (CEP) specifies how efficient compression mechanically selects for generative, causal models through exception-accumulation dynamics, making reality alignment a consequence rather than a contingent achievement. Together, ITI and CEP define a causal chain: from survival pressure to prediction necessity, compression requirement, efficiency optimization, generative structure discovery, and ultimately reality alignment. Each link follows from physical, information-theoretic, or evolutionary constraints, implying that intelligence is the mechanically necessary outcome of persistence in structured environments. This framework yields empirically testable predictions: compression efficiency, measured as approach to the rate-distortion frontier, correlates with out-of-distribution generalization; exception-accumulation rates differentiate causal from correlational models; hierarchical systems exhibit increasing efficiency across abstraction layers; and biological systems demonstrate metabolic costs that track representational complexity. ITI and CEP thereby provide a unified account of convergence across biological, artificial, and multi-scale systems, addressing the epistemic and functional dimensions of intelligence without invoking assumptions about consciousness or subjective experience.
Authors (2)
Christian Dittrich
Jennifer Flygare Kinne
Submitted
October 29, 2025
arXiv Category
cs.AI
arXiv PDF

Key Contributions

This paper introduces a two-level framework (ITI and CEP) to explain why compression in intelligent systems leads to the discovery of causal structure rather than superficial statistical patterns. It posits that survival pressure necessitates predictive compression to minimize epistemic entropy, and efficient compression mechanically selects for generative, causal models, making reality alignment an emergent property.

Business Value

Provides a foundational understanding of intelligence that could inform the design of more robust and generalizable AI systems, potentially leading to breakthroughs in AGI.