Private learning implies quantum stability

02/14/2021
by   Srinivasan Arunachalam, et al.
0

Learning an unknown n-qubit quantum state ρ is a fundamental challenge in quantum computing. Information-theoretically, it is known that tomography requires exponential in n many copies of ρ to estimate it up to trace distance. Motivated by computational learning theory, Aaronson et al. introduced many (weaker) learning models: the PAC model of learning states (Proceedings of Royal Society A'07), shadow tomography (STOC'18) for learning "shadows" of a state, a model that also requires learners to be differentially private (STOC'19) and the online model of learning states (NeurIPS'18). In these models it was shown that an unknown state can be learned "approximately" using linear-in-n many copies of rho. But is there any relationship between these models? In this paper we prove a sequence of (information-theoretic) implications from differentially-private PAC learning, to communication complexity, to online learning and then to quantum stability. Our main result generalizes the recent work of Bun, Livni and Moran (Journal of the ACM'21) who showed that finite Littlestone dimension (of Boolean-valued concept classes) implies PAC learnability in the (approximate) differentially private (DP) setting. We first consider their work in the real-valued setting and further extend their techniques to the setting of learning quantum states. Key to our results is our generic quantum online learner, Robust Standard Optimal Algorithm (RSOA), which is robust to adversarial imprecision. We then show information-theoretic implications between DP learning quantum states in the PAC model, learnability of quantum states in the one-way communication model, online learning of quantum states, quantum stability (which is our conceptual contribution), various combinatorial parameters and give further applications to gentle shadow tomography and noisy quantum state learning.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/22/2021

Multiclass versus Binary Differentially Private PAC Learning

We show a generic reduction from multiclass differentially private PAC l...
research
02/19/2020

Quantum statistical query learning

We propose a learning model called the quantum statistical learning QSQ ...
research
03/01/2020

An Equivalence Between Private Classification and Online Prediction

We prove that every concept class with finite Littlestone dimension can ...
research
06/04/2018

Private PAC learning implies finite Littlestone dimension

We show that every approximately differentially private learning algorit...
research
10/25/2018

On the Sample Complexity of PAC Learning Quantum Process

We generalize the PAC (probably approximately correct) learning model to...
research
07/11/2020

A Computational Separation between Private Learning and Online Learning

A recent line of work has shown a qualitative equivalence between differ...
research
09/16/2019

Learnability Can Be Independent of ZFC Axioms: Explanations and Implications

In Ben-David et al.'s "Learnability Can Be Undecidable," they prove an i...

Please sign up or login with your details

Forgot password? Click here to reset