Shannon’s information theory successfully quantified entropy in communication systems but failed to incorporate coherence as a fundamental principle. Traditional models treat all transmitted data as equally meaningful, yet in reality, only structured, coherence-weighted information contributes to adaptive system evolution. In this paper, I introduce Coherence Information Theory (CIT) as a necessary extension of classical entropy models, defining information not as a raw probability function but as a coherence-weighted exchange that refines system adaptation. I formalize CIT mathematically by introducing a coherence-weighted entropy function, which replaces naïve bit-counting with recursive coherence selection as the key driver of meaning transmission. I demonstrate how CIT applies to language, AI cognition, cryptography, and digital communication, showing that real-world information flow is structured by coherence gradients rather than stochastic distributions. The implications of this shift are profound: AI systems will require coherence tracking to achieve general intelligence, network communication will optimize bandwidth efficiency by eliminating redundant data, and encryption will shift from brute-force complexity to coherence-adaptive security. This paper establishes a unified theoretical framework for meaning formation, knowledge transfer, and adaptive intelligence, resolving critical flaws in existing models of information processing. Through experimental validation, I propose tests for linguistic coherence evolution, entropy-optimized streaming, and AI-driven coherence reasoning. Coherence Information Theory is not just a refinement of existing paradigms—it represents a fundamental shift in how we define and quantify information itself.
Coherence Information Theory and the Future of Communication
Publication date
2025-02-04
Topics
coherence information theory, entropy, information flow, meaning formation, adaptive systems, artificial intelligence, language evolution, cryptography, network optimization, coherence weighting, entropy, information flow, meaning formation, adaptive systems, artificial intelligence, language evolution, cryptography, network optimization, coherence weighting
Collection
opensource
Item Size
14.0M
Addeddate
2025-02-04 17:17:56
Identifier
info_20250204
Identifier-ark
ark:/13960/s22h5b6bp5j
Ocr
tesseract 5.3.0-6-g76ae
Ocr_autonomous
true
Ocr_detected_lang
en
Ocr_detected_lang_conf
1.0000
Ocr_detected_script
Latin
Ocr_detected_script_conf
1.0000
Ocr_module_version
0.0.21
Ocr_parameters
-l eng+Latin
Page_number_confidence
0