Litcius/Paper detail

Financial Sentiment Analysis: An Investigation into Common Mistakes and Silver Bullets

Frank Xing, Lorenzo Malandri, Yue Zhang, Erik Cambria

202075 citationsDOIOpen Access PDF

Abstract

The recent dominance of machine learning-based natural language processing methods has fostered the culture of overemphasizing model accuracies rather than studying the reasons behind their errors. Interpretability, however, is a critical requirement for many downstream AI and NLP applications, e.g., in finance, healthcare, and autonomous driving. This study, instead of proposing any "new model", investigates the error patterns of some widely acknowledged sentiment analysis methods in the finance domain. We discover that (1) those methods belonging to the same clusters are prone to similar error patterns, and (2) there are six types of linguistic features that are pervasive in the common errors. These findings provide important clues and practical considerations for improving sentiment analysis models for financial applications.

Topics & Concepts

InterpretabilityComputer scienceSentiment analysisArtificial intelligenceDominance (genetics)Natural language processingDomain (mathematical analysis)Machine learningData scienceBiochemistryChemistryGeneMathematicsMathematical analysisTopic ModelingStock Market Forecasting MethodsSentiment Analysis and Opinion Mining