基于Lambeq工具包的量子自然语言处理情感分析

Srinjoy Ganguly, Sai Nandan Morapakula, Luis Miguel Pozo Coronado
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引用次数: 3

摘要

情感分类是经典自然语言处理(NLP)的最佳用例之一。我们在银行、商业和营销行业等各个领域见证了它的力量。我们已经知道经典的人工智能和机器学习如何改变和改进技术。量子自然语言处理(Quantum natural language processing, QNLP)是一项新兴的技术,可以为自然语言处理任务提供量子优势。在本文中,我们展示了QNLP在情感分析中的首次应用,并在三种不同类型的模拟中实现了完美的测试集准确性,并在噪声量子设备上运行的实验中实现了不错的准确性。我们利用lambeq QNLP工具包和剑桥量子(Quantum)的t|ket >来产生结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum Natural Language Processing Based Sentiment Analysis Using Lambeq Toolkit
Sentiment classification is one of the best use cases of classical natural language processing (NLP). We witness its power in various domains such as banking, business, and the marketing industry. We already know how classical AI and machine learning can change and improve technology. Quantum natural language processing (QNLP) is a young and gradually emerging technology that can provide a quantum advantage for NLP tasks. In this paper, we show the first application of QNLP for sentiment analysis and achieve perfect test set accuracy for three different kinds of simulations and decent accuracy for experiments run on a noisy quantum device. We utilize the lambeq QNLP toolkit and t|ket > by Cambridge Quantum (Quantinuum) to produce the results.
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