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MultiFin: A Dataset for Multilingual Financial NLP

Rasmus Jørgensen, O. Brandt, Mareike Hartmann, Xiang Dai, Christian Igel, Desmond Elliott

202310 citationsDOIOpen Access PDF

Abstract

Financial information is generated and distributed across the world, resulting in a vast amount of domain-specific multilingual data. Multilingual models adapted to the financial domain would ease deployment when an organization needs to work with multiple languages on a regular basis. For the development and evaluation of such models, there is a need for multilingual financial language processing datasets. We describe MULTIFIN– a publicly available financial dataset consisting of real-world article headlines covering 15 languages across different writing systems and language families. The dataset consists of hierarchical label structure providing two classification tasks: multi-label and multi-class. We develop our annotation schema based on a real-world application and annotate our dataset using both ‘label by native-speaker’ and ‘translate-then-label’ approaches. The evaluation of several popular multilingual models, e.g., mBERT, XLM-R, and mT5, show that although decent accuracy can be achieved in high-resource languages, there is substantial room for improvement in low-resource languages.

Topics & Concepts

Computer scienceArtificial intelligenceNatural language processingAnnotationDomain (mathematical analysis)Schema (genetic algorithms)Resource (disambiguation)Machine learningComputer networkMathematicsMathematical analysisTopic ModelingStock Market Forecasting MethodsNatural Language Processing Techniques