Near-Optimal Relative Error Streaming Quantile Estimation via Elastic Compactors
Computing the approximate quantiles or ranks of a stream is a fundamental task in data monitoring. Given a stream of elements $x_1, x_2, \dots, x_n$ and a query $x$, a relative-error quantile estimation algorithm can estimate the rank of $x$ with respect to the stream, up to a multiplicative $\pm \e...
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Zusammenfassung: | Computing the approximate quantiles or ranks of a stream is a fundamental
task in data monitoring. Given a stream of elements $x_1, x_2, \dots, x_n$ and
a query $x$, a relative-error quantile estimation algorithm can estimate the
rank of $x$ with respect to the stream, up to a multiplicative $\pm \epsilon
\cdot \mathrm{rank}(x)$ error. Notably, this requires the sketch to obtain more
precise estimates for the ranks of elements on the tails of the distribution,
as compared to the additive $\pm \epsilon n$ error regime.
Previously, the best-known algorithms for relative error achieved space
$\tilde O(\epsilon^{-1}\log^{1.5}(\epsilon n))$ (Cormode, Karnin, Liberty,
Thaler, Vesel{\`y}, 2021) and $\tilde O(\epsilon^{-2}\log(\epsilon n))$ (Zhang,
Lin, Xu, Korn, Wang, 2006). In this work, we present a nearly-optimal streaming
algorithm for the relative-error quantile estimation problem using $\tilde
O(\epsilon^{-1}\log(\epsilon n))$ space, which almost matches the trivial
$\Omega(\epsilon^{-1} \log (\epsilon n))$ lower bound.
To surpass the $\Omega(\epsilon^{-1}\log^{1.5}(\epsilon n))$ barrier of the
previous approach, our algorithm crucially relies on a new data structure,
called an elastic compactor, which can be dynamically resized over the course
of the stream. Interestingly, we design a space allocation scheme which
adaptively allocates space to each compactor based on the "hardness" of the
input stream. This approach allows us to avoid using the maximal space
simultaneously for every compactor and facilitates the improvement in the total
space complexity.
Along the way, we also propose and study a new problem called the Top
Quantiles Problem, which only requires the sketch to provide estimates for a
fixed-length tail of the distribution. This problem serves as an important
subproblem in our algorithm, though it is also an interesting problem of its
own right. |
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DOI: | 10.48550/arxiv.2411.01384 |