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A hybrid classical-quantum workflow for natural language processing

L. ORiordan, Myles Doyle, Fabio Baruffa, Venkatesh Kannan

2020Machine Learning Science and Technology31 citationsDOIOpen Access PDF

Abstract

Natural language processing (NLP) problems are ubiquitous in classical computing, where they often require significant computational resources to infer sentence meanings. With the appearance of quantum computing hardware and simulators, it is worth developing methods to examine such problems on these platforms. In this manuscript we demonstrate the use of quantum computing models to perform NLP tasks, where we represent corpus meanings, and perform comparisons between sentences of a given structure. We develop a hybrid workflow for representing small and large scale corpus data sets to be encoded, processed, and decoded using a quantum circuit model. In addition, we provide our results showing the efficacy of the method, and release our developed toolkit as an open software suite.

Topics & Concepts

WorkflowComputer scienceSuiteSentenceArtificial intelligenceNatural language processingSoftwareNatural languageQuantum computerScale (ratio)QuantumProgramming languageDatabaseQuantum mechanicsArchaeologyHistoryPhysicsQuantum Computing Algorithms and ArchitectureMachine Learning in Materials ScienceQuantum Information and Cryptography
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