Distributional identities for a L\'evy process Xt, its quadratic variation
process Vt and its maximal jump processes, are derived, and used to make
"small time" (as t↓0) asymptotic comparisons between them. The
representations are constructed using properties of the underlying Poisson
point process of the jumps of X. Apart from providing insight into the
connections between X, V, and their maximal jump processes, they enable
investigation of a great variety of limiting behaviours. As an application, we
study "self-normalised" versions of Xt, that is, Xt after division by
sup0<s≤tΔXs, or by sup0<s≤t∣ΔXs∣. Thus, we
obtain necessary and sufficient conditions for Xt/sup0<s≤tΔXs
and Xt/sup0<s≤t∣ΔXs∣ to converge in probability to 1, or to
∞, as t↓0, so that X is either comparable to, or dominates,
its largest jump. The former situation tends to occur when the singularity at 0
of the L\'evy measure of X is fairly mild (its tail is slowly varying at 0),
while the latter situation is related to the relative stability or attraction
to normality of X at 0 (a steeper singularity at 0). An important component
in the analyses is the way the largest positive and negative jumps interact
with each other. Analogous "large time" (as t→∞) versions of the
results can also be obtained.Comment: Published at http://dx.doi.org/10.3150/15-BEJ731 in the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm