Published March 4, 2026
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Probabilistic Identity Resolution: Cross-Device Attribution via Bayesian Graph Networks
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Traditional attribution collapses at the identity layer — the same customer appears as dozens of anonymous profiles across devices, browsers, and sessions. This paper presents a probabilistic identity resolution framework using Bayesian graph networks with cross-device matching, deterministic anchoring, and privacy-preserving hashing. The framework achieves sub-second resolution at scale with explicit uncertainty quantification, enabling accurate multi-touch attribution across fragmented customer journeys. Complementary to Robinson (2026a) hybrid attribution and Robinson (2026b) media mix modeling.
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Probabilistic_Identity_Whitepaper.pdf
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