Knowledge informed sustainability detection from short financial texts

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Abstract

Nowadays in the finance world, there is a global trend for responsible investing, linked with a growing need for developing automated methods for analysing Environmental, Social and Governance (ESG) related elements in financial texts. In this work we propose a solution to the FinSim4-ESG task, consisting in classifying sentences from financial reports as sustainable or unsustainable. We propose a novel knowledge-based latent heterogeneous representation that relies on knowledge from taxonomies, knowledge graphs and multiple contemporary document representations. We hypothesize that an approach based on a combination of knowledge and document representations can introduce significant improvement over conventional document representation approaches. We perform ensembling, both at the classifier level and at the representation level (late-fusion and early-fusion). The proposed approaches achieve competitive accuracy of 89% and are 5.85% behind the best score in the shared task.

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APA

Koloski, B., Montariol, S., Purver, M., & Pollak, S. (2022). Knowledge informed sustainability detection from short financial texts. In FinNLP 2022 - 4th Workshop on Financial Technology and Natural Language Processing, Proceedings of the Workshop (pp. 228–234). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.finnlp-1.31

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