Neural Information Causality
Jeongho Bang, Marcin Paw{\l}owski

TL;DR
This paper introduces Neural Information Causality (Neural-IC), a framework embedding information causality into representation learning to analyze query leakage, capacity bounds, and quantum enhancements in neural architectures.
Contribution
Neural-IC formalizes the relationship between query-separated computation, information capacity, and physical bounds, providing operational diagnostics for neural representations.
Findings
Exact one-bit classical RAC benchmark demonstrates quantum enhancement is limited to query-conditioned access.
Nested Neural-RAC protocols amplify correlation biases with depth, linking to Tsirelson's threshold.
Simulations confirm violations are due to broken query separation or capacity undercounting.
Abstract
Query-separated computation forces a representation to play an operational role: data are encoded before a query is known, and a later decoder can answer only through the intermediate interface. In this regime the representation functions as a message rather than merely as a feature map. We formalize this observation by embedding information causality (IC) into representation learning, obtaining a framework called neural information causality (Neural-IC). The revised formulation separates two logically distinct statements. First, every query-separated architecture induces a random-access communication experiment and obeys the embedding inequality . Second, any independently certified physical capacity bound on the interface, such as a hard -bit alphabet, a finite-precision register, or a power-constrained noisy channel, implies…
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