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      Distinguishing the most valuable consumers in social commerce using graphical evaluation and review technique – in the view of incentives

      , , , ,
      Kybernetes
      Emerald

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          Abstract

          Purpose

          The incentive cost of enterprises increases significantly with the rapid growth of the social commerce (SC) market. In this context, enterprises need to develop the optimal strategy to improve incentive effectiveness and reduce cost. Different types of consumers’ responses to incentives bring different values to enterprises. Hence, this paper proposes the social commerce value network (SCVN) to help enterprises study the contributions of different types of consumers to the network.

          Design/methodology/approach

          Based on the graphical evaluation and review technique (GERT), the authors construct the social commerce value GERT (i.e. SCV-GERT) network and design three progressive experiments for estimating the value contributions of “network stage”, “consumer type”, and “resource type” to the SCVN under the same incentives. The authors initialize the SCV-GERT model with consumer data in SC and distinguish the most valuable consumers by adjusting the incentive parameters.

          Findings

          The results show that the SCV-GERT model can well describe the value flow of SCVN. The incentive on forwarding consumers brings the greatest value gain to the SCVN, and social trust contributes the most to forwarding consumers.

          Practical implications

          Under the guidance of the results, platforms and enterprises in SC can select the optimal type of consumers who bring the maximum network value so as to improve the effectiveness of incentive strategy and reduce marketing costs. A four-level incentive system should be established according to the ranking of the corresponding value gains: forwarding consumers > agent consumers > commenting consumers > potential consumers. Enterprises also need to find ways to improve the social resource investments of consumers participating in SC.

          Originality/value

          This paper investigates the incentive problem in SC grounded in the SCVN and uses the GERT method to construct the SCV-GERT model, which is the first attempt to introduce GERT into the SC context. This study also makes up for the lack of comparative research on different types of consumers in SC and can provide support for enterprises’ customer relationship management and marketing decisions.

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          Most cited references70

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          Influencers on Instagram: Antecedents and consequences of opinion leadership

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            Authenticity under threat: When social media influencers need to go beyond self-presentation

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              Deriving Value from Social Commerce Networks

                Author and article information

                Contributors
                Journal
                Kybernetes
                K
                Emerald
                0368-492X
                August 22 2022
                November 09 2023
                August 22 2022
                November 09 2023
                : 52
                : 11
                : 5530-5560
                Article
                10.1108/K-03-2022-0384
                882040ef-fd71-4b35-842a-aa3e40d4c2ac
                © 2023

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