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      Creating identification with brand communities on Twitter : The balance between need for affiliation and need for uniqueness

      , ,
      Internet Research
      Emerald

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          Abstract

          Purpose

          Companies are now using social network sites (SNSs) within their marketing and brand-building activities. Twitter is the preferred SNS for creating brand communities, which offer companies many advantages. The purpose of this paper is to examine how individuals manage their competing needs for being affiliated (operationalized as personal and communal-brand connections) and for being seen as distinctive (operationalized as need for uniqueness (NFU)) when they are members of brand communities on Twitter. The authors have also analysed which type of brand community is able to achieve the balance between both needs, enhancing identification with the brand community.

          Design/methodology/approach

          A total of 318 valid responses were collected from three camera brand communities on Twitter. Messages (“tweets”) which included a link to an online questionnaire were sent to community members via Twitter. The authors examine the proposed model using structural equation modelling.

          Findings

          The authors demonstrate that consumers can satisfy their need for affiliation in brand communities created in Twitter. However, consumers can only reach a balance between the need for affiliation and the need for distinctiveness in brand communities built around niche brands. In contrast, the two needs work in opposition to shape identification in brand communities of big brands.

          Originality/value

          Optimal distinctiveness theory is used as a theoretical background for proposing how the antecedents of identification with the brand community enhance brand loyalty, with reference to the conflict between the individual’s needs for both distinctiveness and affiliation. Consumers’ identification with the brand community is proposed as a mediator to achieve brand loyalty in brand communities. Consumers reach this balance in brand communities built around a niche brand, where individuals with high NFU feel a high identification with the brand community. For big brands, as consumers’ NFU increases, their identification with the brand community and brand loyalty decreases.

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          Most cited references122

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          Cutoff criteria for fit indexes in covariance structure analysis: Conventional criteria versus new alternatives

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            Common method biases in behavioral research: A critical review of the literature and recommended remedies.

            Interest in the problem of method biases has a long history in the behavioral sciences. Despite this, a comprehensive summary of the potential sources of method biases and how to control for them does not exist. Therefore, the purpose of this article is to examine the extent to which method biases influence behavioral research results, identify potential sources of method biases, discuss the cognitive processes through which method biases influence responses to measures, evaluate the many different procedural and statistical techniques that can be used to control method biases, and provide recommendations for how to select appropriate procedural and statistical remedies for different types of research settings.
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              Evaluating Structural Equation Models with Unobservable Variables and Measurement Error

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                Author and article information

                Journal
                Internet Research
                INTR
                Emerald
                1066-2243
                February 06 2017
                February 06 2017
                : 27
                : 1
                : 21-51
                Article
                10.1108/IntR-12-2013-0258
                dc56c505-8b3b-4e66-ba18-b36fa38e0c46
                © 2017

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