FinSim4-ESG共享任务:学习金融领域的语义相似性。ESG见解的扩展版

Juyeon Kang, Ismail El Maarouf
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引用次数: 3

摘要

本文描述了在第四届FinNLP研讨会上组织的FinSim4-ESG 1共享任务,该研讨会与IJCAI-ECAI-2022研讨会一起举行-今年,FinSim4扩展到环境,社会和政府(ESG)见解,并提出了两个子任务,一个用于ESG分类丰富,另一个用于可持续句子预测。在报名参加共享任务的28个团队中,共有8个团队提交了他们的系统结果,6个团队还提交了一篇描述他们方法的论文。每个子任务的获胜者在准确率方面分别表现出0.85%和0.95%的良好性能结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FinSim4-ESG Shared Task: Learning Semantic Similarities for the Financial Domain. Extended edition to ESG insights
This paper describes FinSim4-ESG 1 shared task organized in the 4th FinNLP workshopwhich is held in conjunction with the IJCAI-ECAI-2022 confer- enceThis year, the FinSim4 is extended to the Environment, Social and Government (ESG) insights and proposes two subtasks, one for ESG Taxonomy Enrichment and the other for Sustainable Sentence Prediction. Among the 28 teams registered to the shared task, a total of 8 teams submitted their systems results and 6 teams also submitted a paper to describe their method. The winner of each subtask shows good performance results of 0.85% and 0.95% in terms of accuracy, respectively.
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