Testing classical properties from quantum data
Matthias C. Caro, Preksha Naik, and Joseph Slote

TL;DR
This paper explores quantum algorithms that test properties of Boolean functions using quantum data, recovering classical speedups lost in sampling scenarios and establishing the resource differences between classical queries and quantum data.
Contribution
It introduces quantum property testing algorithms that operate solely from quantum data, surpassing classical limitations and analyzing the resource disparities between classical and quantum testing.
Findings
Quantum algorithms recover classical speedups for property testing from quantum data.
Fourier sampling alone is insufficient for certain property tests, requiring more advanced techniques.
Quantum data and classical queries are fundamentally incomparable resources for property testing.
Abstract
Properties of Boolean functions can often be tested much faster than the functions can be learned. However, this advantage usually disappears when testers are limited to random samples of a function --a natural setting for data science--rather than queries. In this work we initiate the study of a quantum version of this "data science scenario": quantum algorithms that test properties of solely from quantum data in the form of copies of the function state . New tests. For three well-established properties--monotonicity, symmetry, and triangle-freeness--we show that the speedup lost when restricting classical testers to sampled data can be recovered by quantum algorithms operating solely from quantum data. Inadequacy of Fourier sampling. Our new testers use techniques beyond quantum Fourier sampling, and we show that…
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