Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan

Twitter is the most popular microblogging service in Indonesia, with nearly 23 million users. In the era of big data such as the current tweets from customers, observers, potential consumers, or the community of users of products or services of a company will greatly help companies in knowing the in...

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Main Authors: Affandy Affandy, Oktania Nandiyati
Format: Article
Language:English
Published: Program Studi Sistem Informasi 2020-05-01
Series:JOINS (Journal of Information System)
Online Access:http://publikasi.dinus.ac.id/index.php/joins/article/view/3608
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spelling doaj-a41fc3c761944cacbc22b57b9df99d8f2020-11-25T03:16:52ZengProgram Studi Sistem InformasiJOINS (Journal of Information System)2528-02282528-02362020-05-015112613510.33633/joins.v5i1.36081774Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan PerusahaanAffandy Affandy0Oktania Nandiyati1Universitas Dian NuswantoroUniversitas Dian NuswantoroTwitter is the most popular microblogging service in Indonesia, with nearly 23 million users. In the era of big data such as the current tweets from customers, observers, potential consumers, or the community of users of products or services of a company will greatly help companies in knowing the industrial and consumer landscape, so as to determine strategic plans that will contribute to the company's growth. However, the use of data from social media such as Twitter is hampered by a number of technical difficulties in the process of collecting, processing, and analysing. Specifically, this research applies the Naïve Bayes Classifier algorithm in the process of sentiment analysis of tweets data into a prototype application that is intended to make it easier for companies / organizations to know people's perceptions of their products or services. The NBC algorithm was chosen because this algorithm is able to do a good classification even though it uses small training data, but has high accuracy and process speed for handling large training data. From the evaluation results found a prototype running well where the keywords entered will trigger the Twitter API to crawl the data then the mining process can be monitored at each stage and at the end of the process, the system will show the final sentiment level values and the representation of the calculation results log in a chart form over a certain period of time.http://publikasi.dinus.ac.id/index.php/joins/article/view/3608
collection DOAJ
language English
format Article
sources DOAJ
author Affandy Affandy
Oktania Nandiyati
spellingShingle Affandy Affandy
Oktania Nandiyati
Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan
JOINS (Journal of Information System)
author_facet Affandy Affandy
Oktania Nandiyati
author_sort Affandy Affandy
title Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan
title_short Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan
title_full Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan
title_fullStr Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan
title_full_unstemmed Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan
title_sort sentiment analysis berbasis algoritma naïve bayes classsifier untuk identifikasi persepsi masyarakat terhadap produk / layanan perusahaan
publisher Program Studi Sistem Informasi
series JOINS (Journal of Information System)
issn 2528-0228
2528-0236
publishDate 2020-05-01
description Twitter is the most popular microblogging service in Indonesia, with nearly 23 million users. In the era of big data such as the current tweets from customers, observers, potential consumers, or the community of users of products or services of a company will greatly help companies in knowing the industrial and consumer landscape, so as to determine strategic plans that will contribute to the company's growth. However, the use of data from social media such as Twitter is hampered by a number of technical difficulties in the process of collecting, processing, and analysing. Specifically, this research applies the Naïve Bayes Classifier algorithm in the process of sentiment analysis of tweets data into a prototype application that is intended to make it easier for companies / organizations to know people's perceptions of their products or services. The NBC algorithm was chosen because this algorithm is able to do a good classification even though it uses small training data, but has high accuracy and process speed for handling large training data. From the evaluation results found a prototype running well where the keywords entered will trigger the Twitter API to crawl the data then the mining process can be monitored at each stage and at the end of the process, the system will show the final sentiment level values and the representation of the calculation results log in a chart form over a certain period of time.
url http://publikasi.dinus.ac.id/index.php/joins/article/view/3608
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AT oktanianandiyati sentimentanalysisberbasisalgoritmanaivebayesclasssifieruntukidentifikasipersepsimasyarakatterhadapproduklayananperusahaan
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