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            A Framework for Online Social Network Volatile Data Analysis: A Case for the Fast Fashion Industry
            
            
               Anoud Bani Hani (Zayed University, United Arab Emirates)  
              
             
            
            
               Feras Al-Obeidat (Zayed University, United Arab Emirates)  
              
             
            
            
               Elhadj Benkhelifa (e.benkhelifa@staffs.ac.uk, United Kingdom)  
              
             
            
            
               Oluwasegun Adedugbe (Staffordshire University, United Kingdom)  
              
             
                    
            
              Abstract: 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. 
             
            
              Keywords: consumer satisfaction, data mining, fast fashion, sentiment analysis, sentiment scaling, social mining 
             
            Categories: K.4, K.7, K.8  
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