Learning with Comparison Feedback: Online Estimation of Sample Statistics

01/11/2021
by   Michela Meister, et al.
0

We study an online version of the noisy binary search problem where feedback is generated by a non-stochastic adversary rather than perturbed by random noise. We reframe this as maintaining an accurate estimate for the median of an adversarial sequence of integers, x_1, x_2, …, in a model where each number x_t can only be accessed through a single threshold query of the form 1(x_t ≤ q_t). In this online comparison feedback model, we explore estimation of general sample statistics, providing robust algorithms for median, CDF, and mean estimation with nearly matching lower bounds. We conclude with several high-dimensional generalizations.

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