The eligibility of various advanced quantum algorithms will be questioned if they can not guarantee privacy. To fill this knowledge gap, here we devise an efficient quantum differentially private (QDP) Lasso estimator to solve sparse regression tasks. Concretely, given $N$ $d$-dimensional data points with $N\ll d$, we first prove that the optimal classical and quantum non-private Lasso requires $\Omega(N+d)$ and $\Omega(\sqrt{N}+\sqrt{d})$ runtime, respectively. We next prove that the runtime cost of QDP Lasso is \textit{dimension independent}, i.e., $O(N^{5/2})$, which implies that the QDP Lasso can be faster than both the optimal classical and quantum non-private Lasso. Last, we exhibit that the QDP Lasso attains a near-optimal utility bo...
Privacy amplification is the key step to guarantee the security of quantum communication. The existi...
© 2017 IEEE. More and more quantum algorithms have been designed for solving problems in machine lea...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
Differential privacy has been an exceptionally successful concept when it comes to providing provabl...
Distributed quantum computing is a promising computational paradigm for performing computations that...
Quantum algorithms for solving a wide range of practical problems have been proposed in the last ten...
In this work, we propose a novel architecture (and several variants thereof) based on quantum crypto...
With careful manipulation, malicious agents can reverse engineer private information encoded in pre-...
Recently, quantum classifiers have been known to be vulnerable to adversarial attacks, where quantum...
Lasso and Ridge are important minimization problems in machine learning and statistics. They are ver...
Differential privacy (DP) is the de facto standard for private data release and private machine lear...
Noise in quantum information processing is often viewed as a disruptive and difficult-to-avoid featu...
Motivated by personalized healthcare and other applications involving sensitive data, we study onlin...
Data mining is a key technology in big data analytics and it can discover understandable knowledge (...
The hybrid quantum-classical learning scheme provides a prominent way to achieve quantum advantages ...
Privacy amplification is the key step to guarantee the security of quantum communication. The existi...
© 2017 IEEE. More and more quantum algorithms have been designed for solving problems in machine lea...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
Differential privacy has been an exceptionally successful concept when it comes to providing provabl...
Distributed quantum computing is a promising computational paradigm for performing computations that...
Quantum algorithms for solving a wide range of practical problems have been proposed in the last ten...
In this work, we propose a novel architecture (and several variants thereof) based on quantum crypto...
With careful manipulation, malicious agents can reverse engineer private information encoded in pre-...
Recently, quantum classifiers have been known to be vulnerable to adversarial attacks, where quantum...
Lasso and Ridge are important minimization problems in machine learning and statistics. They are ver...
Differential privacy (DP) is the de facto standard for private data release and private machine lear...
Noise in quantum information processing is often viewed as a disruptive and difficult-to-avoid featu...
Motivated by personalized healthcare and other applications involving sensitive data, we study onlin...
Data mining is a key technology in big data analytics and it can discover understandable knowledge (...
The hybrid quantum-classical learning scheme provides a prominent way to achieve quantum advantages ...
Privacy amplification is the key step to guarantee the security of quantum communication. The existi...
© 2017 IEEE. More and more quantum algorithms have been designed for solving problems in machine lea...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...