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arxiv: 1805.10827 · v1 · pith:WIYKYC2Vnew · submitted 2018-05-28 · 🧬 q-bio.NC · stat.ML

Learning Temporal Structures of Random Patterns

classification 🧬 q-bio.NC stat.ML
keywords learningpatternhumanstatisticstemporalpatternsrandomstructures
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A cornerstone of human statistical learning is the ability to extract temporal regularities / patterns from random sequences. Here we present a method of computing pattern time statistics with generating functions for first-order Markov trials and independent Bernoulli trials. We show that the pattern time statistics cover a wide range of measurements commonly used in existing studies of both human and machine learning of stochastic processes, including probability of alternation, temporal correlation between pattern events, and related variance / risk measures. Moreover, we show that recurrent processing and event segmentation by pattern overlap may provide a coherent explanation for the sensitivity of the human brain to the rich statistics and the latent structures in the learning environment.

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