Information recovery from observations by a random walk having jump distribution with exponential tails
classification
🧮 math.PR
keywords
sceneryrandomwalkdistributionincrementsintegersobservationsreconstruction
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A {\it scenery} is a coloring $\xi$ of the integers. Let $\{S_t\}_{t\geq 0}$ be a recurrent random walk on the integers. Observing the scenery $\xi$ along the path of this random walk, one sees the color $\chi_t:=\xi(S_t)$ at time $t$. The {\it scenery reconstruction problem} is concerned with recovering the scenery $\xi$, given only the sequence of observations $\chi:=(\chi_t)_{t\geq 0}$. The scenery reconstruction methods presented to date require the random walk to have bounded increments. Here, we present a new approach for random walks with unbounded increments which works when the tail of the increment distribution decays exponentially fast enough and the scenery has five colors.
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