Ghiasvand Mohammadkhani Mohammad, Ranjbar Niloofar, Momtazi Saeedeh
Amirkabir University Of Technology, Tehran, Iran.
Neural Netw. 2025 Nov;191:107847. doi: 10.1016/j.neunet.2025.107847. Epub 2025 Jul 9.
Generative approaches have significantly influenced Aspect-Based Sentiment Analysis (ABSA), garnering considerable attention. However, existing studies often predict target text components monolithically, neglecting the benefits of utilizing single elements for tuple prediction. In this paper, we introduce Element to Tuple Prompting (E2TP), employing a two-step architecture. The former step focuses on predicting single elements, while the latter step completes the process by mapping these predicted elements to their corresponding tuples. E2TP is inspired by human problem-solving, breaking down tasks into manageable parts, using the first step's output as a guide in the second step. Within this strategy, three types of paradigms, namely E2TP(diet), E2TP(f), and E2TP(f), are designed to facilitate the training process. Beyond dataset-specific experiments, our paper addresses cross-domain scenarios, demonstrating the effectiveness and generalizability of the approach. By conducting a comprehensive analysis across 10 different datasets for dataset-specific experiments, as well as 6 different states for cross-domain experiments, we show that E2TP achieves new state-of-the-art results in nearly all cases in terms of the F1 score evaluation metric..
生成式方法对基于方面的情感分析(ABSA)产生了重大影响,受到了广泛关注。然而,现有研究通常整体预测目标文本组件,而忽略了利用单个元素进行元组预测的好处。在本文中,我们引入了元素到元组提示(E2TP),采用两步架构。前一步专注于预测单个元素,而后一步通过将这些预测元素映射到相应的元组来完成整个过程。E2TP的灵感来自于人类解决问题的方式,将任务分解为可管理的部分,并将第一步的输出作为第二步的指导。在这一策略中,设计了三种类型的范式,即E2TP(饮食)、E2TP(f)和E2TP(f),以促进训练过程。除了特定数据集的实验,我们的论文还探讨了跨域场景,证明了该方法的有效性和通用性。通过对特定数据集实验的10个不同数据集以及跨域实验的6个不同状态进行全面分析,我们表明,在F1分数评估指标方面,E2TP在几乎所有情况下都取得了新的最优结果。