Limit theorems for a strongly irreducible product of independent random matrices under optimal moment assumptions

Abstract

Let be a probability distribution over the linear semi-group End(E) for E a finite dimensional vector space over a locally compact field. We assume that is proximal, strongly irreducible and that *n\0\=0 for all integers n∈N . We consider the random sequence γn := γ0 ·s γn-1 for (γk)k 0 independents of distribution law . We define the logarithmic singular gap as sqz = ( μ1μ2 ) , where μ1 and μ2 are the two largest singular values. We show that (sqz(γn))n∈N escapes to infinity linearly and satisfies exponential large deviations estimates below its escape rate. With the same assumptions, we also show that the image of a generic line by γn as well as its eigenspace of maximal eigenvalue both converge to the same random line l∞ at an exponential speed.If we moreover assume that the push-forward distribution N() is Lp for N:g(\|g\|\|g-1\|) and for some p 1 , then we show that |w(l∞)| is Lp for all unitary linear form w and the logarithm of each coefficient of γn is almost surely equivalent to the logarithm of the norm. To prove these results, we do not rely on any classical results for random products of invertible matrices with L1 moment assumption. Instead we describe an effective way to group the i.i.d factors into i.i.d random words that are aligned in the Cartan projection. We moreover have an explicit control over the moments.

0

Turn this paper into a lesson

ArcXiv compiles a structured reading guide from this paper's metadata: plain-English importance, contributions, prerequisite concepts, which sections to read first, flashcards, and a quiz. Grounded in the abstract, never invented.

Discussion (0)

Sign in to join the discussion.

Loading comments…