Approximating $L_p$ unit balls via random sampling (2008.08380v1)
Abstract: Let $X$ be an isotropic random vector in $Rd$ that satisfies that for every $v \in S{d-1}$, $|<X,v>|{L_q} \leq L |<X,v>|{L_p}$ for some $q \geq 2p$. We show that for $0<\varepsilon<1$, a set of $N = c(p,q,\varepsilon) d$ random points, selected independently according to $X$, can be used to construct a $1 \pm \varepsilon$ approximation of the $L_p$ unit ball endowed on $Rd$ by $X$. Moreover, $c(p,q,\varepsilon) \leq cp \varepsilon{-2}\log(2/\varepsilon)$; when $q=2p$ the approximation is achieved with probability at least $1-2\exp(-cN \varepsilon2/\log2(2/\varepsilon))$ and if $q$ is much larger than $p$---say, $q=4p$, the approximation is achieved with probability at least $1-2\exp(-cN \varepsilon2)$. In particular, when $X$ is a log-concave random vector, this estimate improves the previous state-of-the-art---that $N=c\prime(p,\varepsilon) d{p/2}\log d$ random points are enough, and that the approximation is valid with constant probability.
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