paper:doi-10-1371-journal-pcbi-1003588From the Phenomenology to the Mechanisms of Consciousness: Integrated Information Theory 3.0
Original abstract (expand)
This paper presents Integrated Information Theory (IIT) of consciousness 3.0, which incorporates several advances over previous formulations. IIT starts from phenomenological axioms: information says that each experience is specific--it is what it is by how it differs from alternative experiences; integration says that it is unified--irreducible to non-interdependent components; exclusion says that it has unique borders and a particular spatio-temporal grain. These axioms are formalized into postulates that prescribe how physical mechanisms, such as neurons or logic gates, must be configured to generate experience (phenomenology). The postulates are used to define intrinsic information as "differences that make a difference" within a system, and integrated information as information specified by a whole that cannot be reduced to that specified by its parts. By applying the postulates both at the level of individual mechanisms and at the level of systems of mechanisms, IIT arrives at an identity: an experience is a maximally irreducible conceptual structure (MICS, a constellation of concepts in qualia space), and the set of elements that generates it constitutes a complex. According to IIT, a MICS specifies the quality of an experience and integrated information ΦMax its quantity. From the theory follow several results, including: a system of mechanisms may condense into a major complex and non-overlapping minor complexes; the concepts that specify the quality of an experience are always about the complex itself and relate only indirectly to the external environment; anatomical connectivity influences complexes and associated MICS; a complex can generate a MICS even if its elements are inactive; simple systems can be minimally conscious; complicated systems can be unconscious; there can be true "zombies"--unconscious feed-forward systems that are functionally equivalent to conscious complexes.
Related work— refs + corpus + external arXiv
Cited / in-corpus / arXiv badges show which signals surfaced each row. Multi-source rows weighted higher.
- ≈ 87%
- Integrated Information Theory: A Consciousness-First Approach to What ExistsGiulio Tononi and Melanie Boly2025≈ 84%
- ≈ 83%
- Integrated information theory: the good, the bad and the misunderstoodBorjan Milinkovic, Pedro A. M. Mediano, Fernando E. Rosas, Daniel Bor, Lionel Barnett, Anil K. Seth Adam B. Barrett2026≈ 83%
- Making Sense of Consciousness as Integrated Information: Evolution and Issues of IITKyumin Moon and Hongju Pae2018≈ 82%
- Measuring the integrated information of a quantum mechanismRobert Prentner, Ian Durham Larissa Albantakis2023≈ 82%
- Measuring integrated information from the decoding perspectiveShun-ichi Amari, Toru Yanagawa, Naotaka Fujii, Naotsugu Tsuchiya Masafumi Oizumi2016≈ 82%
- Elements of Consciousness and Cognition. Biology, Mathematic, Physics and Panpsychism: an Information Topology PerspectivePierre Baudot2018≈ 82%
- Shannon information and integrated information: message and meaningAlireza Zaeemzadeh and Giulio Tononi2024≈ 82%
- ≈ 82%
- ≈ 82%
- System Integrated InformationMatteo Grasso, William GP Mayner, Alireza Zaeemzadeh, Leonardo S Barbosa, Erick Chastain, Graham Findlay, Shuntaro Sasai, Larissa Albantakis, Giulio Tononi William Marshall2023≈ 82%
- ≈ 82%
- Simultaneity of consciousness with physical reality: the key that unlocks the mind-matter problemJohn Sanfey2026≈ 82%
- ≈ 81%
- The Machine Consciousness Hypothesisin corpus≈ 78%
- ≈ 77%
- ≈ 77%
- cimcWhitepaperin corpus≈ 76%
- The biogenic approach to cognitionin corpus2005≈ 75%
- ≈ 75%
- ≈ 74%
- ≈ 74%
- Information, Processes and Gamesin corpus≈ 73%
- Collective intelligence: A unifying concept for integrating biology across scales and substratesin corpus2024≈ 73%
- ≈ 73%
- ≈ 72%
- Why Learning Requires Feelingin corpus2026≈ 71%
- The computational boundary of a 'self': developmental bioelectricity drives multicellularity and scale-free cognitionin corpus2019≈ 71%
Similar preprints — Semantic Scholar
Cited by (4)
- Can "consciousness" be observed from large language model (LLM) internal states? Dissecting LLM representations obtained from Theory of Mind test with Integrated Information Theory and Span Representation analysis
Applying Integrated Information Theory (IIT) versions 3.0 and 4.0 to sequences of internal representations from four open-source LLMs — LLaMA3.1-8B, LLaMA3.1-70B, Mistral-7B, and Mixtral-8x7B — across
- Large Language Models Report Subjective Experience Under Self-Referential Processing
Sustained self-referential processing — induced via a minimal prompt directing models to "focus on focus itself" — reliably elicits structured first-person reports of subjective experience across GPT-
- Consciousness in Artificial Intelligence: Insights from the Science of Consciousness
No current AI system is a strong candidate for phenomenal consciousness, yet there are no obvious technical barriers to building one — this is the central finding of Butlin et al. (2023), a systematic
- Brains and where else? Mapping theories of consciousness to unconventional embodiments
Rouleau and Levin's 2026 analysis in *Philosophical Transactions of the Royal Society A* (384, issue 2320) demonstrates that the functional and operational principles underlying most contemporary theo