Litcius/Paper detail

Detecting Sentiment toward Emerging Infectious Diseases on Social Media: A Validity Evaluation of Dictionary-Based Sentiment Analysis

Sanguk Lee, Siyuan Ma, Jingbo Meng, Jie Zhuang, Tai‐Quan Peng

2022International Journal of Environmental Research and Public Health10 citationsDOIOpen Access PDF

Abstract

Despite the popularity and efficiency of dictionary-based sentiment analysis (DSA) for public health research, limited empirical evidence has been produced about the validity of DSA and potential harms to the validity of DSA. A random sample of a second-hand Ebola tweet dataset was used to evaluate the validity of DSA compared to the manual coding approach and examine the influences of textual features on the validity of DSA. The results revealed substantial inconsistency between DSA and the manual coding approach. The presence of certain textual features such as negation can partially account for the inconsistency between DSA and manual coding. The findings imply that scholars should be careful and critical about findings in disease-related public health research that use DSA. Certain textual features should be more carefully addressed in DSA.

Topics & Concepts

PopularitySentiment analysisSocial mediaCoding (social sciences)External validityComputer scienceNegationPsychologyNatural language processingData scienceArtificial intelligenceSocial psychologyStatisticsMathematicsWorld Wide WebProgramming languageSentiment Analysis and Opinion MiningMisinformation and Its ImpactsHumor Studies and Applications