A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry

Consumer satisfaction is an important part for any business as it has been shown to be a major factor for consumer loyalty. Identifying satisfaction in products is also important as it allows businesses alter production plans based on the level of consumer satisfaction for a product. With consumer s...

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Main Authors: Anoud Hani, Feras Al-Obeidat, Elhadj Benkhelifa, Oluwasegun Adedugbe
Format: Article
Language:English
Published: Graz University of Technology 2020-01-01
Series:Journal of Universal Computer Science
Subjects:
Online Access:https://lib.jucs.org/article/23993/download/pdf/
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spelling doaj-fd14232945904bf0a48708530f80669e2021-09-28T14:07:45ZengGraz University of TechnologyJournal of Universal Computer Science0948-69682020-01-0126112715510.3897/jucs.2020.00823993A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion IndustryAnoud Hani0Feras Al-Obeidat1Elhadj Benkhelifa2Oluwasegun Adedugbe3Zayed UniversityZayed UniversityStaffordshire UniversityStaffordshire UniversityConsumer satisfaction is an important part for any business as it has been shown to be a major factor for consumer loyalty. Identifying satisfaction in products is also important as it allows businesses alter production plans based on the level of consumer satisfaction for a product. With consumer satisfaction data being very volatile for some products due to a short requirement period for such products, current consumer satisfaction must be identified within a shorter period before the data becomes obsolete. The fast fashion industry, which is part of the fashion industry, is adopted as a case study in this research. Unlike slow fashion, fast fashion products have short shelf lives and their retailers must be able to react swiftly to consumer demands. This research aims to investigate the effectiveness of current data mining techniques when used to identify consumer satisfaction towards fast fashion products. This is carried out by designing, implementing and testing a software artefact that utilises data mining techniques to obtain, validate and analyse fast fashion social data, sourced from Twitter, to identify consumer satisfaction towards specific product types. In addition, further analysis is carried out using a sentiment scaling method adapted to the characteristics of fast fashion.https://lib.jucs.org/article/23993/download/pdf/sentiment analysissentiment scalingdata mining
collection DOAJ
language English
format Article
sources DOAJ
author Anoud Hani
Feras Al-Obeidat
Elhadj Benkhelifa
Oluwasegun Adedugbe
spellingShingle Anoud Hani
Feras Al-Obeidat
Elhadj Benkhelifa
Oluwasegun Adedugbe
A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry
Journal of Universal Computer Science
sentiment analysis
sentiment scaling
data mining
author_facet Anoud Hani
Feras Al-Obeidat
Elhadj Benkhelifa
Oluwasegun Adedugbe
author_sort Anoud Hani
title A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry
title_short A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry
title_full A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry
title_fullStr A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry
title_full_unstemmed A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry
title_sort framework for online social network volatile data analysis: a case for the fast fashion industry
publisher Graz University of Technology
series Journal of Universal Computer Science
issn 0948-6968
publishDate 2020-01-01
description Consumer satisfaction is an important part for any business as it has been shown to be a major factor for consumer loyalty. Identifying satisfaction in products is also important as it allows businesses alter production plans based on the level of consumer satisfaction for a product. With consumer satisfaction data being very volatile for some products due to a short requirement period for such products, current consumer satisfaction must be identified within a shorter period before the data becomes obsolete. The fast fashion industry, which is part of the fashion industry, is adopted as a case study in this research. Unlike slow fashion, fast fashion products have short shelf lives and their retailers must be able to react swiftly to consumer demands. This research aims to investigate the effectiveness of current data mining techniques when used to identify consumer satisfaction towards fast fashion products. This is carried out by designing, implementing and testing a software artefact that utilises data mining techniques to obtain, validate and analyse fast fashion social data, sourced from Twitter, to identify consumer satisfaction towards specific product types. In addition, further analysis is carried out using a sentiment scaling method adapted to the characteristics of fast fashion.
topic sentiment analysis
sentiment scaling
data mining
url https://lib.jucs.org/article/23993/download/pdf/
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