FinSim-2任务:用连体变形金刚学习金融语义相似性

Nhu Khoa Nguyen, Emanuela Boros, Gaël Lejeune, A. Doucet, Thierry Delahaut
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引用次数: 3

摘要

在本文中,我们提出了FinSIM-2共享任务2021中关于金融领域语义相似性学习的不同方法。此任务的主要重点是评估从外部本体提取的金融术语分类为相应的顶级概念(也称为缩略词)。我们将此任务视为语义文本相似性问题。通过使用预训练语言模型编码器的连体网络,我们获得了语义上有意义的术语嵌入,并以排名的方式计算了它们之间的相似度得分。此外,我们展示了将任务作为多类分类问题处理的不同基线的结果。提出的方法优于我们的基线,并证明了基于文本相似连体网络的模型的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
L3i_LBPAM at the FinSim-2 task: Learning Financial Semantic Similarities with Siamese Transformers
In this paper, we present the different methods proposed for the FinSIM-2 Shared Task 2021 on Learning Semantic Similarities for the Financial domain. The main focus of this task is to evaluate the classification of financial terms into corresponding top-level concepts (also known as hypernyms) that were extracted from an external ontology. We approached the task as a semantic textual similarity problem. By relying on a siamese network with pre-trained language model encoders, we derived semantically meaningful term embeddings and computed similarity scores between them in a ranked manner. Additionally, we exhibit the results of different baselines in which the task is tackled as a multi-class classification problem. The proposed methods outperformed our baselines and proved the robustness of the models based on textual similarity siamese network.
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