Twitter Sentiment Analysis as an Evaluation and Service Base On Python Textblob

Author:

Mas Diyasa I Gede Susrama,Marini Mandenni Ni Made Ika,Fachrurrozi Mohammad Idham,Pradika Sunu Ilham,Nur Manab Kholilul Rachman,Sasmita Nyoman Rahadi

Abstract

Abstract The development of technology in the current era is very rapid, this is indicated by the many social media that have sprung up. One popular social media is Twitter. Twitter initially became a forum for social media users as a place to preach activities, discuss, and share stories between users. However, now Twitter is even a place for complaints for customers of a company, one of which is PT Telkom Indonesia. Some customers prefer not to contact the call centre that has been provided by the company to be contacted if there is a problem, but prefer to complain via Twitter. According to data taken during a certain period, 3324 tweets were obtained, which included the keywords indihome, myindihome, useetv, and wifi.id. The tweets data that has been collected, if processed properly, will be valuable information for the company. For example, as a reference to assess brand image, customer feedback, and marketing opportunities. This study classifies tweets where the keywords indihome, myindihome, useetv, and wifi.di. Furthermore, several data preprocessing techniques were carried out, sentiment analysis, and visualization in the form of histograms, pie charts, and word clouds. From 3324 tweets that have been analyzed, it is found that there are 34.4% positive tweets, 16.1% negative tweets, and 49.6% neutral tweets.

Publisher

IOP Publishing

Subject

General Medicine

Reference22 articles.

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