Litcius/Paper detail

Financial Context News Sentiment Analysis for the Lithuanian Language

Rokas Štrimaitis, Pavel Stefanovič, Simona Ramanauskaitė, Asta Slotkienė

2021Applied Sciences35 citationsDOIOpen Access PDF

Abstract

Financial area analysis is not limited to enterprise performance analysis. It is worth analyzing as wide an area as possible to obtain the full impression of a specific enterprise. News website content is a datum source that expresses the public’s opinion on enterprise operations, status, etc. Therefore, it is worth analyzing the news portal article text. Sentiment analysis in English texts and financial area texts exist, and are accurate, the complexity of Lithuanian language is mostly concentrated on sentiment analysis of comment texts, and does not provide high accuracy. Therefore in this paper, the supervised machine learning model was implemented to assign sentiment analysis on financial context news, gathered from Lithuanian language websites. The analysis was made using three commonly used classification algorithms in the field of sentiment analysis. The hyperparameters optimization using the grid search was performed to discover the best parameters of each classifier. All experimental investigations were made using the newly collected datasets from four Lithuanian news websites. The results of the applied machine learning algorithms show that the highest accuracy is obtained using a non-balanced dataset, via the multinomial Naive Bayes algorithm (71.1%). The other algorithm accuracies were slightly lower: a long short-term memory (71%), and a support vector machine (70.4%).

Topics & Concepts

LithuanianSentiment analysisComputer scienceNaive Bayes classifierArtificial intelligenceContext (archaeology)Support vector machineMachine learningNatural language processingInformation retrievalData miningLinguisticsPaleontologyBiologyPhilosophySentiment Analysis and Opinion MiningStock Market Forecasting MethodsAdvanced Text Analysis Techniques