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Application of Quantum Natural Language Processing for Language Translation

Mina Abbaszade, Vahid Salari, Seyed Shahin Mousavi, Mariam Zomorodi‐Moghadam, Xujuan Zhou

2021IEEE Access56 citationsDOIOpen Access PDF

Abstract

In this paper, we develop compositional vector-based semantics of positive transitive sentences using quantum natural language processing (Q-NLP) to compare the parametrized quantum circuits of two synonymous simple sentences in English and Persian. We propose a protocol based on quantum long short-term memory (Q-LSTM) for Q-NLP to perform various tasks in general but specifically for translating a sentence from English to Persian. Then, we generalize our method to use quantum circuits of sentences as an input for the Q-LSTM cell. This enables us to translate sentences in different languages. Our work paves the way toward representing quantum neural machine translation, which may demonstrate quadratic speedup and converge faster or reaches a better accuracy over classical methods.

Topics & Concepts

Computer scienceMachine translationNatural language processingArtificial intelligenceSentenceSpeedupLanguage translationTransitive relationSemantics (computer science)QuantumTranslation (biology)Programming languageMathematicsMessenger RNAPhysicsBiochemistryChemistryGeneCombinatoricsOperating systemQuantum mechanicsQuantum Computing Algorithms and ArchitectureMachine Learning in Materials ScienceTopic Modeling
Application of Quantum Natural Language Processing for Language Translation | Litcius