PolyU-CBS在FinSim-2任务中的应用:结合分布式、基于字符串和基于变换的特征在金融领域进行超词检测

Emmanuele Chersoni, Chu-Ren Huang
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引用次数: 7

摘要

在这篇文章中,我们描述了理大哥伦比亚广播公司团队在第二次金融领域语义相似度学习共享任务(FinSim-2)上展示的系统,参与的团队必须为金融领域的目标术语列表识别正确的首字母缩略词。对于这个任务,我们用几个分布式的、基于字符串的和Transformer的特征运行了分类实验。我们的研究结果表明,一个简单的逻辑回归分类器,当在词嵌入、语义和字符串相似度量以及bert衍生概率的组合上进行训练时,在金融超长词检测方面取得了很强的性能(超过90%)。
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PolyU-CBS at the FinSim-2 Task: Combining Distributional, String-Based and Transformers-Based Features for Hypernymy Detection in the Financial Domain
In this contribution, we describe the systems presented by the PolyU CBS Team at the second Shared Task on Learning Semantic Similarities for the Financial Domain (FinSim-2), where participating teams had to identify the right hypernyms for a list of target terms from the financial domain. For this task, we ran our classification experiments with several distributional, string-based, and Transformer features. Our results show that a simple logistic regression classifier, when trained on a combination of word embeddings, semantic and string similarity metrics and BERT-derived probabilities, achieves a strong performance (above 90%) in financial hypernymy detection.
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