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      Detecting customers knowledge from social media big data: toward an integrated methodological framework based on netnography and business analytics

      , , , ,
      Journal of Knowledge Management
      Emerald

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          Abstract

          Purpose

          This paper aims to demonstrate how the integration of netnography and business analytics can support companies in the process of value creation from social big data by leveraging on customer relationship management and customer knowledge management (CKM).

          Design/methodology/approach

          This paper adopts the methodology of a single case study by using desk analysis, netnography and business analytics. The context of analysis has been identified into the case of Aurora Company, a well-known producer of fountain pens.

          Findings

          The case demonstrates how the integration of big data analytics and netnography is relevant for the development of a customer relationship management strategy. The results obtained have been categorized according to the three main categories of customer knowledge, such as knowledge for, from and about customer.

          Research limitations/implications

          This paper presents implications for the advancement of the theory on CKM by demonstrating, as the acquisition, storage and management of data generated by customers on social media require the adoption of a cross-disciplinary approach resulting from the integration of qualitative and quantitative approaches. The framework is structured as methodological tool to detect knowledge in virtual community.

          Practical implications

          Practical implications arise for managers and entrepreneurs in terms of value creation from knowledge assets generated on social big data through the management of the customers’ relationship and data-driven innovation patterns.

          Originality/value

          This paper offers an original contribution of integration of well-established research streams. The focus on the knowledge under the perspectives of information assets for, from and about customers in the debate on value creation and management of big data is an element of value offered by this study in addition to the comprehension of strategies of social customer relationship management as actual initiative embraced by a company in the leveraging of innovation and tradition.

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          Most cited references77

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          Building Theories from Case Study Research.

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            • Article: not found

            Users of the world, unite! The challenges and opportunities of Social Media

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              Grounded theory research: Procedures, canons, and evaluative criteria

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                Author and article information

                Journal
                Journal of Knowledge Management
                JKM
                Emerald
                1367-3270
                1367-3270
                May 05 2020
                May 29 2020
                May 05 2020
                May 29 2020
                : 24
                : 4
                : 799-821
                Article
                10.1108/JKM-11-2019-0637
                f725513e-0b2b-46f2-b6a2-72201ce45da3
                © 2020

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