Quantum Algorithms for Compositional Text Processing
Tuomas Laakkonen (Quantinuum), Konstantinos Meichanetzidis, (Quantinuum), Bob Coecke (Quantinuum)

TL;DR
This paper introduces QDisCoCirc, a quantum adaptation of a compositional natural language processing framework, demonstrating potential quantum speedups for text similarity and question-answering tasks, highlighting quantum advantage in NLP.
Contribution
It proposes a quantum model for compositional NLP, deriving quantum algorithms for text similarity and question-answering, and demonstrates potential quantum speedups over classical methods.
Findings
Quantum algorithms for text similarity are BQP-hard.
Classical implementation would require super-polynomial resources.
A quantum implementation on hardware is outlined and demonstrated.
Abstract
Quantum computing and AI have found a fruitful intersection in the field of natural language processing. We focus on the recently proposed DisCoCirc framework for natural language, and propose a quantum adaptation, QDisCoCirc. This is motivated by a compositional approach to rendering AI interpretable: the behavior of the whole can be understood in terms of the behavior of parts, and the way they are put together. For the model-native primitive operation of text similarity, we derive quantum algorithms for fault-tolerant quantum computers to solve the task of question-answering within QDisCoCirc, and show that this is BQP-hard; note that we do not consider the complexity of question-answering in other natural language processing models. Assuming widely-held conjectures, implementing the proposed model classically would require super-polynomial resources. Therefore, it could provide a…
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