Quantum Machine Learning For Classical Data
Leonard Wossnig

TL;DR
This dissertation explores how quantum computing can accelerate supervised machine learning on classical data, providing theoretical bounds, classical simulations, and proposing a novel quantum algorithm with potential exponential advantages.
Contribution
It introduces new bounds on quantum machine learning algorithm complexities, classical simulations of quantum routines, and a novel quantum algorithm for Quantum Boltzmann machines.
Findings
Derived bounds on supervised QML algorithm complexities
Classical algorithm with similar complexity to quantum Hamiltonian simulation
Proposed a quantum algorithm for Quantum Boltzmann machines with potential exponential advantage
Abstract
In this dissertation, we study the intersection of quantum computing and supervised machine learning algorithms, which means that we investigate quantum algorithms for supervised machine learning that operate on classical data. This area of research falls under the umbrella of quantum machine learning, a research area of computer science which has recently received wide attention. In particular, we investigate to what extent quantum computers can be used to accelerate supervised machine learning algorithms. The aim of this is to develop a clear understanding of the promises and limitations of the current state of the art of quantum algorithms for supervised machine learning, but also to define directions for future research in this exciting field. We start by looking at supervised quantum machine learning (QML) algorithms through the lens of statistical learning theory. In this…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Stochastic Gradient Optimization Techniques
