Markov chains are mathematical models describing sequences of events in which the probability of each future state depends solely on the present state. Random walks constitute a prominent subclass in ...
Embedding techniques for Markov chains seek to determine when a discrete‐time transition matrix can be realised as the matrix exponential of a continuous‐time generator. This embedding problem lies at ...
A 30-minute talk about Markov modeling generally, with specific reference to the seminal 1986 contribution of Professor Eaves, which described Markov processes for genetic and environmental variance ...
What Is Markov Chain Monte Carlo? Markov Chain Monte Carlo (MCMC) is a powerful technique used in statistics and various scientific fields to sample from complex probability distributions. It is ...
A randomized phase II study of carboplatin/gemcitabine (CG) versus vinorelbine/gemcitabine (VG) in patients with advanced non-small cell lung cancer (NSCLC); mature ...
This paper proposes a hidden state Markov model (HMM) that incorporates workers’ unobserved labor market attachment into the analysis of labor market dynamics. Unlike previous literature, which ...
A Markov model was constructed to compare CMT versus RT alone for patients with early-stage ENKTCL, according to five risk groups defined by NRI model. Transition probabilities, effectiveness, and ...
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