Towards a Theory of Additive Eigenvectors
Abstract
The standard approach in solving stochastic equations is eigenvector decomposition. Using separation ansatz P(i,t)=u(i)eμ t one obtains standard equation for eigenvectors Ku=μ u, where K is the rate matrix of the master equation. While universally accepted, the standard approach is not the only possibility. Using additive separation ansatz S(i,t)=W(i)- t one arrives at additive eigenvectors. Here we suggest a theory of such eigenvectors. We argue that additive eigenvectors describe conditioned Markov processes and derive corresponding equations. The formalism is applied to one-dimensional stochastic process corresponding to the telegraph equation. We derive differential equations for additive eigenvectors and explore their properties. The proposed theory of additive eigenvectors provides a new description of stochastic processes with peculiar properties.
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