Litcius/Paper detail

EvoMSA: A Multilingual Evolutionary Approach for Sentiment Analysis [Application Notes]

Mario Graff, Sabino Miranda-Jimenez, Eric S. Tellez, Daniela Moctezuma

2020IEEE Computational Intelligence Magazine10 citationsDOIOpen Access PDF

Abstract

Sentiment analysis (SA) is a task related to understanding people's feelings in written text; the starting point would be to identify the polarity level (positive, neutral or negative) of a given text, moving on to identify emotions or whether a text is humorous or not. This task has been the subject of several research competitions in a number of languages, e.g., English, Spanish, and Arabic, among others. In this contribution, we propose an SA system, namely EvoMSA, that unifies our participating systems in various SA competitions, making it domain-independent and multilingual by processing text using only language-independent techniques. EvoMSA is a classifier, based on Genetic Programming that works by combining the output of different text classifiers to produce the final prediction. We analyzed EvoMSA on different SA competitions to provide a global overview of its performance. The results indicated that EvoMSA is competitive obtaining top rankings in several SA competitions. Furthermore, we performed an analysis of EvoMSA's components to measure their contribution to the performance; the aim was to facilitate a practitioner or newcomer to implement a competitive SA classifier. Finally, it is worth to mention that EvoMSA is available as open-source software.

Topics & Concepts

Computer scienceSentiment analysisTask (project management)Artificial intelligencePoint (geometry)Natural language processingSubject (documents)Polarity (international relations)FeelingGenetic programmingMeasure (data warehouse)Task analysisMachine learningInformation retrievalComputational intelligenceVariation (astronomy)Evolutionary computationComputational linguisticsText processingRanking (information retrieval)Sentiment Analysis and Opinion MiningEmotion and Mood RecognitionGenerative Adversarial Networks and Image Synthesis