English

Instance-Optimality in I/O-Efficient Sampling and Sequential Estimation

Data Structures and Algorithms 2024-10-21 v1

Abstract

Suppose we have a memory storing 00s and 11s and we want to estimate the frequency of 11s by sampling. We want to do this I/O-efficiently, exploiting that each read gives a block of BB bits at unit cost; not just one bit. If the input consists of uniform blocks: either all 1s or all 0s, then sampling a whole block at a time does not reduce the number of samples needed for estimation. On the other hand, if bits are randomly permuted, then getting a block of BB bits is as good as getting BB independent bit samples. However, we do not want to make any such assumptions on the input. Instead, our goal is to have an algorithm with instance-dependent performance guarantees which stops sampling blocks as soon as we know that we have a probabilistically reliable estimate. We prove our algorithms to be instance-optimal among algorithms oblivious to the order of the blocks, which we argue is the strongest form of instance optimality we can hope for. We also present similar results for I/O-efficiently estimating mean with both additive and multiplicative error, estimating histograms, quantiles, as well as the empirical cumulative distribution function. We obtain our above results on I/O-efficient sampling by reducing to corresponding problems in the so-called sequential estimation. In this setting, one samples from an unknown distribution until one can provide an estimate with some desired error probability. We then provide non-parametric instance-optimal results for several fundamental problems: mean and quantile estimation, as well as learning mixture distributions with respect to \ell_\infty and the so-called Kolmogorov-Smirnov distance.

Keywords

Cite

@article{arxiv.2410.14643,
  title  = {Instance-Optimality in I/O-Efficient Sampling and Sequential Estimation},
  author = {Shyam Narayanan and Václav Rozhoň and Jakub Tětek and Mikkel Thorup},
  journal= {arXiv preprint arXiv:2410.14643},
  year   = {2024}
}

Comments

To appear at FOCS 2024