markov embedding
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2021 ◽  
Vol 83 (3) ◽  
Author(s):  
Muhammad Ardiyansyah ◽  
Dimitra Kosta ◽  
Kaie Kubjas

AbstractWe study model embeddability, which is a variation of the famous embedding problem in probability theory, when apart from the requirement that the Markov matrix is the matrix exponential of a rate matrix, we additionally ask that the rate matrix follows the model structure. We provide a characterisation of model embeddable Markov matrices corresponding to symmetric group-based phylogenetic models. In particular, we provide necessary and sufficient conditions in terms of the eigenvalues of symmetric group-based matrices. To showcase our main result on model embeddability, we provide an application to hachimoji models, which are eight-state models for synthetic DNA. Moreover, our main result on model embeddability enables us to compute the volume of the set of model embeddable Markov matrices relative to the volume of other relevant sets of Markov matrices within the model.


2020 ◽  
Vol 594 ◽  
pp. 262-299 ◽  
Author(s):  
Michael Baake ◽  
Jeremy Sumner
Keyword(s):  

2019 ◽  
Vol 65 ◽  
pp. 114-144
Author(s):  
Alessandro Balata ◽  
Côme Huré ◽  
Mathieu Laurière ◽  
Huyên Pham ◽  
Isaque Pimentel

We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial conditional MKV, and extending the known class of linear quadratic stochastic MKV control problems. We show how this polynomial class can be reduced by suitable Markov embedding to finite-dimensional stochastic control problems, and provide a discussion and comparison of three probabilistic numerical methods for solving the reduced control problem: quantization, regression by control randomization, and regress-later methods. Our numerical results are illustrated on various examples from portfolio selection and liquidation under drift uncertainty, and a model of interbank systemic risk with partial observation.


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