Quantum circuits implement Hamming-distance-like genomic classifiers via active and symmetric inner products on IBM quantum processors with fixed qubit requirements for arbitrary training samples.
Can small quantum systems learn?
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
We examine the question of whether quantum mechanics places limitations on the ability of small quantum devices to learn. We specifically examine the question in the context of Bayesian inference, wherein the prior and posterior distributions are encoded in the quantum state vector. We conclude based on lower bounds from Grover's search that an efficient blackbox method for updating the distribution is impossible. We then address this by providing a new adaptive form of approximate quantum Bayesian inference that is polynomially faster than its classical analogue and tractable if the quantum system is augmented with classical memory or if the low-order moments of the distribution are protected using a repetition code. This work suggests that there may be a connection between fault tolerance and the capacity of a quantum system to learn from its surroundings.
fields
quant-ph 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Implementation of a Hamming-Distance-Like Genomic Quantum Classifier Using Inner Products on IBMQX4 and IBMQX16
Quantum circuits implement Hamming-distance-like genomic classifiers via active and symmetric inner products on IBM quantum processors with fixed qubit requirements for arbitrary training samples.