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by tsucres
2876 days ago
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The paper [1] states: > There is a classical algorithm whose output distribution is O(ε)-close in total variation distance to the distribution given by l2-norm sampling from the ith row of a low- rank approximation D of A in query and time complexity [O(poly-func)] where δ is the probability of failure. So the classical algorithm would give a "sufficiently close" approximation of what the QML would output? The article doesn't mention this at all. Is it fair to compare a quantum algorithm with an equivalent classical approximation algorithm? From the quanta magazine article: > Computer scientists had considered [the recommendation problem] to be one of the best examples of a problem that’s exponentially faster to solve on quantum computers — making it an important validation of the power of these futuristic machines. Now Tang has stripped that validation away. Has he really? [1] https://arxiv.org/pdf/1807.04271.pdf |
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The comparison is fair and the author is giving a metric to compare the algorithms too.