PERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING
Loket.com is an e-commerce company providing online ticket sales services that experienced growth in 2023 due to the resumption of events post the Covid-19 pandemic. To facilitate continuous improvement in their business processes, Loket.com requires information about customer satisfaction levels...
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id-itb.:777262023-09-13T14:02:17ZPERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING Hanendya Ega Cristi K, Nicolaus Indonesia Final Project Loket.com, analisis sentimen, text mining, continuous improvement INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/77726 Loket.com is an e-commerce company providing online ticket sales services that experienced growth in 2023 due to the resumption of events post the Covid-19 pandemic. To facilitate continuous improvement in their business processes, Loket.com requires information about customer satisfaction levels and issues faced by customers. However, Loket.com lacks a direct application for gathering user feedback, necessitating the manual review of input. Leveraging the potential of the Twitter platform, which contains a significant volume of customer opinions and comments, a sentiment analysis model was designed to automatically process textual data and generate valuable insights. The design of the sentiment analysis model employed text mining techniques and followed the CRISP-DM methodology. The data collection process was conducted using tweet-harvesting, resulting in the acquisition of 8.296 text data from Twitter related to Loket.com. Subsequently, the data was cleaned and trained using machine learning algorithms such as CNN, LSTM, CNN-LSTM, LSTM-CNN, GRU- CNN, and SVM. Model evaluation demonstrated that the SVM algorithm, with an accuracy of 87% and a processing time of 5 seconds, outperformed other models, making it the chosen prototype. After being analyzed, it was concluded that a model with a simple architecture could predict moderately sized data more optimally. The prototype was developed using two platforms, namely Google Colab for data scraping and Streamlit for visualizing the prediction results of the sentiment analysis model. The application comprises three pages: the main page, data scraping page, and sentiment analysis page, all equipped with exploratory data analysis features. With a predictive sentiment analysis model in place, the company can easily gauge the sentiments of the Twitter community, serving as decision support to measure customer satisfaction levels and contribute to continuous improvement efforts in enhancing Loket.com's services. text |
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Loket.com is an e-commerce company providing online ticket sales services that
experienced growth in 2023 due to the resumption of events post the Covid-19
pandemic. To facilitate continuous improvement in their business processes,
Loket.com requires information about customer satisfaction levels and issues faced
by customers. However, Loket.com lacks a direct application for gathering user
feedback, necessitating the manual review of input. Leveraging the potential of the
Twitter platform, which contains a significant volume of customer opinions and
comments, a sentiment analysis model was designed to automatically process
textual data and generate valuable insights.
The design of the sentiment analysis model employed text mining techniques and
followed the CRISP-DM methodology. The data collection process was conducted
using tweet-harvesting, resulting in the acquisition of 8.296 text data from Twitter
related to Loket.com. Subsequently, the data was cleaned and trained using
machine learning algorithms such as CNN, LSTM, CNN-LSTM, LSTM-CNN, GRU-
CNN, and SVM. Model evaluation demonstrated that the SVM algorithm, with an
accuracy of 87% and a processing time of 5 seconds, outperformed other models,
making it the chosen prototype. After being analyzed, it was concluded that a model
with a simple architecture could predict moderately sized data more optimally.
The prototype was developed using two platforms, namely Google Colab for data
scraping and Streamlit for visualizing the prediction results of the sentiment
analysis model. The application comprises three pages: the main page, data
scraping page, and sentiment analysis page, all equipped with exploratory data
analysis features. With a predictive sentiment analysis model in place, the company
can easily gauge the sentiments of the Twitter community, serving as decision
support to measure customer satisfaction levels and contribute to continuous
improvement efforts in enhancing Loket.com's services.
|
format |
Final Project |
author |
Hanendya Ega Cristi K, Nicolaus |
spellingShingle |
Hanendya Ega Cristi K, Nicolaus PERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING |
author_facet |
Hanendya Ega Cristi K, Nicolaus |
author_sort |
Hanendya Ega Cristi K, Nicolaus |
title |
PERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING |
title_short |
PERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING |
title_full |
PERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING |
title_fullStr |
PERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING |
title_full_unstemmed |
PERANCANGAN MODEL ANALISIS SENTIMEN LAYANAN LOKET.COM DI TWITTER DENGAN METODE TEXT MINING |
title_sort |
perancangan model analisis sentimen layanan loket.com di twitter dengan metode text mining |
url |
https://digilib.itb.ac.id/gdl/view/77726 |
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1822995472876306432 |