We study the asymptotic behaviour of a
d-dimensional self-interacting random walk (
X n )
n∈? (?:={1,2,3,…}) which is repelled or attracted by the centre of mass
(G_{n} = n^{-1} sum_{i=1}^{n} X_{i}) of its previous trajectory. The walk’s trajectory (
X 1,…,
X n ) models a random polymer chain in either poor or good solvent. In addition to some natural regularity conditions, we assume that the walk has one-step mean drift
$mathbb{E}[X_{n+1} - X_n mid X_n - G_n = mathbf{x}] approxrho|mathbf{x}|^{-beta}hat{ mathbf{x}}$
for
ρ∈? and
β≥0. When
β<1 and
ρ>0, we show that
X n is transient with a limiting (random) direction and satisfies a super-diffusive law of large numbers:
n ?1/(1+β) X n converges almost surely to some random vector. When
β∈(0,1) there is sub-ballistic rate of escape. When
β≥0 and
ρ∈? we give almost-sure bounds on the norms ‖
X n ‖, which in the context of the polymer model reveal extended and collapsed phases.
Analysis of the random walk, and in particular of
X n ?
G n , leads to the study of real-valued time-inhomogeneous non-Markov processes (
Z n )
n∈? on [0,∞) with mean drifts of the form
$ mathbb{E}[ Z_{n+1} - Z_n mid Z_n = x ] approxrho x^{-beta} - frac {x}{n},$
(0.1)
where
β≥0 and
ρ∈?. The study of such processes is a time-dependent variation on a classical problem of Lamperti; moreover, they arise naturally in the context of the distance of simple random walk on ?
d from its centre of mass, for which we also give an apparently new result. We give a recurrence classification and asymptotic theory for processes
Z n satisfying (
0.1), which enables us to deduce the complete recurrence classification (for any
β≥0) of
X n ?
G n for our self-interacting walk.