The impact of political party/candidate on the election results from a sentiment analysis perspective using #AnambraDecides2017 tweets

This work investigates empirically the impact of political party control over its candidates or vice versa on winning an election using a natural language processing technique called sentiment analysis (SA). To do this, a set of 7430 tweets bearing or related to #AnambraDecides2017 was streamed duri...

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Veröffentlicht in:Social network analysis and mining 2020-12, Vol.10 (1), p.55, Article 55
Hauptverfasser: Onyenwe, Ikechukwu, Nwagbo, Samuel, Mbeledogu, Njideka, Onyedinma, Ebele
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creator Onyenwe, Ikechukwu
Nwagbo, Samuel
Mbeledogu, Njideka
Onyedinma, Ebele
description This work investigates empirically the impact of political party control over its candidates or vice versa on winning an election using a natural language processing technique called sentiment analysis (SA). To do this, a set of 7430 tweets bearing or related to #AnambraDecides2017 was streamed during the November 18, 2017, Anambra State gubernatorial election. These are Twitter discussions on the top five political parties and their candidates termed political actors in this paper. We conduct polarity and subjectivity sentiment analyses on all the tweets considering time as a useful dimension of SA. Furthermore, we use the word frequency to find words most associated with the political actors in a given time. We find most talked about topics using a topic modeling algorithm and how the computed sentiments and most frequent words are related to the topics per political actor. Among other things, we deduced from the experimental results that even though a political party serves as a platform that sales the personality of a candidate, the acceptance of the candidate/party adds to the winning of an election. For example, we found the winner of the election Willie Obiano benefiting from the values his party share among the people of the State. Associating his name with his party, All Progressive Grand Alliance (APGA) displays more positive sentiments and the subjective sentiment analysis indicates that Twitter users mentioning APGA are less emotionally subjective in their tweets than the other parties.
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subjects Actors
Algorithms
Applications of Graph Theory and Complex Networks
Candidates
Computer Science
Data mining
Data Mining and Knowledge Discovery
Economics
Election results
Elections
Game Theory
Humanities
Law
Methodology of the Social Sciences
Natural language processing
Negative campaigning
Original Article
Political activism
Political analysis
Political parties
Public policy
Sales
Sentiment analysis
Social and Behav. Sciences
Social networks
State elections
Statistics for Social Sciences
Subjectivity
Topics
Voters
Word frequency
title The impact of political party/candidate on the election results from a sentiment analysis perspective using #AnambraDecides2017 tweets
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