PRX Quantum (Feb 2024)

Analyzing Prospects for Quantum Advantage in Topological Data Analysis

  • Dominic W. Berry,
  • Yuan Su,
  • Casper Gyurik,
  • Robbie King,
  • Joao Basso,
  • Alexander Del Toro Barba,
  • Abhishek Rajput,
  • Nathan Wiebe,
  • Vedran Dunjko,
  • Ryan Babbush

DOI
https://doi.org/10.1103/PRXQuantum.5.010319
Journal volume & issue
Vol. 5, no. 1
p. 010319

Abstract

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Lloyd et al. [Nat. Commun. 7, 10138 (2016)] were first to demonstrate the promise of quantum algorithms for computing Betti numbers, a way to characterize topological features of data sets. Here, we propose, analyze, and optimize an improved quantum algorithm for topological data analysis (TDA) with reduced scaling, including a method for preparing Dicke states based on inequality testing, a more efficient amplitude estimation algorithm using Kaiser windows, and an optimal implementation of eigenvalue projectors based on Chebyshev polynomials. We compile our approach to a fault-tolerant gate set and estimate constant factors in the Toffoli complexity. Our analysis reveals that superquadratic quantum speedups are only possible for this problem when targeting a multiplicative error approximation and the Betti number grows asymptotically. Further, we propose a dequantization of the quantum TDA algorithm that shows that having exponentially large dimension and Betti number are necessary, but insufficient conditions, for superpolynomial advantage. We then introduce and analyze specific problem examples which have parameters in the regime where superpolynomial advantages may be achieved, and argue that quantum circuits with tens of billions of Toffoli gates can solve seemingly classically intractable instances.