aiai at the FinSim-2 task: Finance Domain Terms Automatic Classification Via Word Ontology and Embedding

Ke Tian, Hua Chen
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引用次数: 4

Abstract

This paper describes the method that we submitted to the FinSim-2 task on learning similarities for the financial domain. This task aims to automatically classify the Financial domain terms into the most relevant hypernym (or top-level) concept in an external ontology. This paper shows the result of experiments using the Catboost, Attention-LSTM, BERT, RoBERTa to develop an automatic finance domain classifier via word ontology and embedding. The experiment result demonstrates that each model could be an effective method to tackle the FinSim-2 task, respectively.
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基于词本体和嵌入的金融领域术语自动分类
本文描述了我们提交给FinSim-2任务的关于金融领域相似性学习的方法。此任务旨在将金融领域术语自动分类为外部本体中最相关的超词(或顶级)概念。本文介绍了利用Catboost、Attention-LSTM、BERT、RoBERTa等方法,利用词本体和嵌入技术开发金融领域自动分类器的实验结果。实验结果表明,每种模型都能有效地解决FinSim-2任务。
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