Quantum Transfer Learning for Acceptability Judgements

G. Buonaiuto, Raffaele Guarasci, Aniello Minutolo, G. Pietro, M. Esposito
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Abstract

Hybrid quantum-classical classifiers promise to positively impact critical aspects of natural language processing tasks, particularly classification-related ones. Among the possibilities currently investigated, quantum transfer learning, i.e., using a quantum circuit for fine-tuning pre-trained classical models for a specific task, is attracting significant attention as a potential platform for proving quantum advantage. This work shows potential advantages, both in terms of performance and expressiveness, of quantum transfer learning algorithms trained on embedding vectors extracted from a large language model to perform classification on a classical Linguistics task: acceptability judgments. Acceptability judgment is the ability to determine whether a sentence is considered natural and well-formed by a native speaker. The approach has been tested on sentences extracted from ItaCoLa, a corpus that collects Italian sentences labeled with their acceptability judgment. The evaluation phase shows results for the quantum transfer learning pipeline comparable to state-of-the-art classical transfer learning algorithms, proving current quantum computers' capabilities to tackle NLP tasks for ready-to-use applications. Furthermore, a qualitative linguistic analysis, aided by explainable AI methods, reveals the capabilities of quantum transfer learning algorithms to correctly classify complex and more structured sentences, compared to their classical counterpart. This finding sets the ground for a quantifiable quantum advantage in NLP in the near future.
可接受性判断的量子迁移学习
混合量子经典分类器有望对自然语言处理任务的关键方面产生积极影响,尤其是与分类相关的任务。在目前研究的可能性中,量子迁移学习(即针对特定任务使用量子电路微调预先训练好的经典模型)作为证明量子优势的潜在平台备受关注。这项工作展示了量子迁移学习算法在性能和表现力方面的潜在优势,这些算法是根据从大型语言模型中提取的嵌入向量进行训练的,用于对经典语言学任务(可接受性判断)进行分类。可接受性判断是指确定一个句子是否被母语使用者认为是自然且格式正确的能力。该方法已在从 ItaCoLa 提取的句子上进行了测试,ItaCoLa 是一个语料库,收集了标有可接受性判断的意大利语句子。评估阶段显示,量子迁移学习管道的结果可与最先进的经典迁移学习算法相媲美,证明了当前的量子计算机有能力处理即用型应用的 NLP 任务。此外,在可解释人工智能方法的辅助下进行的定性语言分析表明,与经典算法相比,量子迁移学习算法有能力对复杂和结构更复杂的句子进行正确分类。这一发现为不久的将来在 NLP 领域实现可量化的量子优势奠定了基础。
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