Quantum Text Encoding for Classification Tasks

Aaranya Alexander, D. Widdows
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引用次数: 1

Abstract

This paper explores text classification on quantum computers. Previous results have achieved perfect accuracy on an artificial dataset of 100 short sentences, but at the unscalable cost of using a qubit for each word. This paper demonstrates that an amplitude encoded feature map combined with a quantum support vector machine can achieve 62% average accuracy predicting sentiment using a dataset of 50 actual movie reviews. This is still small, but considerably larger than previously-reported results in quantum NLP.
分类任务的量子文本编码
本文探讨了量子计算机上的文本分类。之前的结果在100个短句的人工数据集上取得了完美的准确性,但每个词使用一个量子位的成本不可扩展。本文证明了振幅编码特征映射与量子支持向量机相结合,使用50个实际电影评论的数据集预测情绪可以达到62%的平均准确率。这仍然很小,但比之前报道的量子NLP结果要大得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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