We introduce and study a family of random processes with a discrete time
related to products of random matrices. Such processes are formed by singular
values of random matrix products, and the number of factors in a random matrix
product plays a role of a discrete time. We consider in detail the case when
the (squared) singular values of the initial random matrix form a polynomial
ensemble, and the initial random matrix is multiplied by standard complex
Gaussian matrices. In this case we show that the random process is a
discrete-time determinantal point process. For three special cases (the case
when the initial random matrix is a standard complex Gaussian matrix, the case
when it is a truncated unitary matrix, or the case when it is a standard
complex Gaussian matrix with a source) we compute the dynamical correlations
functions explicitly, and find the hard edge scaling limits of the correlation
kernels. The proofs rely on the Eynard-Mehta theorem, and on contour integral
representations for the correlation kernels suitable for an asymptotic
analysis.Comment: 27 pages, typos corrected, references adde