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A Core of E-Commerce Customer Experience based on Conversational Data using Network Text Methodology

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  • Andry Alamsyah
  • Nurlisa Laksmiani
  • Lies Anisa Rahimi

Abstract

E-commerce provides an efficient and effective way to exchange goods between sellers and customers. E-commerce has been a popular method for doing business, because of its simplicity of having commerce activity transparently available, including customer voice and opinion about their own experience. Those experiences can be a great benefit to understand customer experience comprehensively, both for sellers and future customers. This paper applies to e-commerces and customers in Indonesia. Many Indonesian customers expressed their voice to open social network services such as Twitter and Facebook, where a large proportion of data is in the form of conversational data. By understanding customer behavior through open social network service, we can have descriptions about the e-commerce services level in Indonesia. Thus, it is related to the government's effort to improve the Indonesian digital economy ecosystem. A method for finding core topics in large-scale internet unstructured text data is needed, where the method should be fast but sufficiently accurate. Processing large-scale data is not a straightforward job, it often needs special skills of people and complex software and hardware computer system. We propose a fast methodology of text mining methods based on frequently appeared words and their word association to form network text methodology. This method is adapted from Social Network Analysis by the model relationships between words instead of actors.

Suggested Citation

  • Andry Alamsyah & Nurlisa Laksmiani & Lies Anisa Rahimi, 2021. "A Core of E-Commerce Customer Experience based on Conversational Data using Network Text Methodology," Papers 2102.09107, arXiv.org.
  • Handle: RePEc:arx:papers:2102.09107
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    File URL: http://arxiv.org/pdf/2102.09107
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