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Kean Chen, Minbo Gao, Tongyang Li, Qisheng Wang, Xinzhao Wang (May 06 2026).
Abstract: We propose a quantum multi-level estimation framework for a functional i=1nf(pi)\sum_{i=1}^n f(p_i) of a discrete distribution (pi)i=1n(p_i)_{i=1}^n. We partition the values pip_i into logarithmically many intervals whose length decays exponentially. For each interval, we perform non-destructive singular value discrimination to isolate the relevant pip_i, enabling adaptive estimation of the partial sum over this interval. Unlike previous variable-time approaches, our method avoids high control overhead and requires only constant extra ancilla qubits. As an application, we present efficient quantum estimators for the qq-Tsallis entropy of discrete distributions. Specifically: (i) For q>1q > 1, we obtain a near-optimal quantum algorithm with query complexity Θ~(1/εmax{1/(2(q1)),1})\tilde{\Theta}(1/\varepsilon^{\max\{1/(2(q-1)), 1\}}), improving the prior best O(1/ε1+1/(q1))O(1/\varepsilon^{1+1/(q-1)}) due to Liu and Wang (SODA 2025; IEEE Trans. Inf. Theory 2026). (ii) For 0<q<10 < q < 1, we obtain a quantum algorithm with query complexity O~(n1/q1/2/ε1/q)\tilde{O}(n^{1/q-1/2}/\varepsilon^{1/q}), exhibiting a quantum speedup over the near-optimal classical estimators due to Jiao, Venkat, Han, and Weissman (IEEE Trans. Inf. Theory 2017). Our results achieve, to our knowledge, the first near-optimal quantum estimators for parameterized qq-entropy for non-integer qq.

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