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QNLP in Practice: Running Compositional Models of Meaning on a Quantum Computer.

Computing Research Repository (CoRR)(2023)

Quantinuum LLC

Cited 26|Views36
Abstract
Quantum Natural Language Processing (QNLP) deals with the design and implementation of NLP models intended to be run on quantum hardware. In this paper, we present results on the first NLP experiments conducted on Noisy Intermediate-Scale Quantum (NISQ) computers for datasets of size greater than 100 sentences. Exploiting the formal similarity of the compositional model of meaning by Coecke, Sadrzadeh, and Clark (2010) with quantum theory, we create representations for sentences that have a natural mapping to quantum circuits. We use these representations to implement and successfully train NLP models that solve simple sentence classification tasks on quantum hardware. We conduct quantum simulations that compare the syntax-sensitive model of Coecke et al. with two baselines that use less or no syntax; specifically, we implement the quantum analogues of a “bag-of-words” model, where syntax is not taken into account at all, and of a word-sequence model, where only word order is respected. We demonstrate that all models converge smoothly both in simulations and when run on quantum hardware, and that the results are the expected ones based on the nature of the tasks and the datasets used. Another important goal of this paper is to describe in a way accessible to AI and NLP researchers the main principles, process and challenges of experiments on quantum hardware. Our aim in doing this is to take the first small steps in this unexplored research territory and pave the way for practical Quantum Natural Language Processing.
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Quantum Simulation,Quantum Computation,Quantum Machine Learning,Fault-tolerant Quantum Computation,Quantum Information
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要点】:本研究首次在Noisy Intermediate-Scale Quantum (NISQ) 计算机上实现了大于100句数据集的自然语言处理(NLP)实验,通过将句子表示为量子电路,成功训练了解决简单句子分类任务的NLP模型,并证明了量子计算在NLP领域的潜力。

方法】:研究利用Coecke等人提出的意义组合模型与量子理论的相似性,创建与量子电路自然映射的句子表示,并在量子硬件上实现和训练NLP模型。

实验】:实验使用量子模拟比较了Coecke等人的语法敏感模型与“词袋”模型和“词序”模型,所有模型在模拟和实际量子硬件上都平滑收敛,结果符合任务和数据集的特性。数据集大小超过100句,具体数据集名称未提及。