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Stochastic processes / Markov models / Markov processes / Graph theory / Markov chain / Probability distribution
Date: 2015-06-22 15:01:21
Stochastic processes
Markov models
Markov processes
Graph theory
Markov chain
Probability distribution

MA469 R-projects forfrom R.S.MacKay 1. Hubble’s law without Friedmann’s equations Background: Hubble’s law (that redshift z is proportional to distance D) or its refinements are nowadays based on assuming

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