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The Reflexive Integrated Information Unit: A Differentiable Primitive for Artificial Consciousness

Resource type
Preprint
Authors/contributors
Title
The Reflexive Integrated Information Unit: A Differentiable Primitive for Artificial Consciousness
Abstract
Research on artificial consciousness lacks the equivalent of the perceptron: a small, trainable module that can be copied, benchmarked, and iteratively improved. We introduce the Reflexive Integrated Information Unit (RIIU), a recurrent cell that augments its hidden state $h$ with two additional vectors: (i) a meta-state $\mu$ that records the cell's own causal footprint, and (ii) a broadcast buffer $B$ that exposes that footprint to the rest of the network. A sliding-window covariance and a differentiable Auto-$\Phi$ surrogate let each RIIU maximize local information integration online. We prove that RIIUs (1) are end-to-end differentiable, (2) compose additively, and (3) perform $\Phi$-monotone plasticity under gradient ascent. In an eight-way Grid-world, a four-layer RIIU agent restores $>90\%$ reward within 13 steps after actuator failure, twice as fast as a parameter-matched GRU, while maintaining a non-zero Auto-$\Phi$ signal. By shrinking "consciousness-like" computation down to unit scale, RIIUs turn a philosophical debate into an empirical mathematical problem.
Repository
arXiv
Archive ID
arXiv:2506.13825
Date
2025-06-15
Accessed
6/30/25, 1:22 PM
Short Title
The Reflexive Integrated Information Unit
Library Catalog
Extra
arXiv:2506.13825 [cs]
Citation
N’guessan, G. L. R., & Karambal, I. (2025). The Reflexive Integrated Information Unit: A Differentiable Primitive for Artificial Consciousness (No. arXiv:2506.13825). arXiv. https://doi.org/10.48550/arXiv.2506.13825