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Sentiment Analysis on Twitter Data Using Term Frequency-Inverse Document Frequency

Akash Addiga, Sikha Bagui

2022Journal of Computer and Communications26 citationsDOIOpen Access PDF

Abstract

This study is an exploratory analysis of applying natural language processing techniques such as Term Frequency-Inverse Document Frequency and Sentiment Analysis on Twitter data. The uniqueness of this work is established by determining the overall sentiment of a politician’s tweets based on TF-IDF values of terms used in their published tweets. By calculating the TF-IDF value of terms from the corpus, this work displays the correlation between TF-IDF score and polarity. The results of this work show that calculating the TF-IDF score of the corpus allows for a more accurate representation of the overall polarity since terms are given a weight based on their uniqueness and relevance rather than just the frequency at which they appear in the corpus.

Topics & Concepts

tf–idfSentiment analysisPolarity (international relations)Computer scienceTerm (time)UniquenessRepresentation (politics)Natural language processingRelevance (law)InverseExploratory analysisInformation retrievalArtificial intelligenceMathematicsData scienceLawBiologyPhysicsGeometryQuantum mechanicsCellPolitical scienceGeneticsMathematical analysisPoliticsSentiment Analysis and Opinion MiningComplex Network Analysis TechniquesAdvanced Text Analysis Techniques
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