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Forecasting social CRM adoption in SMEs: A combined SEM-neural network method

机译:预测中小企业的社会CRM采用率:一种SEM-神经网络组合方法

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The growth of social media usage questions the old-style idea of customer relationship management (CRM). Social CRM strategy is a novel version of CRM empowered by social media technology that offers a new way of managing relationships with customers effectively. This study aims to forecast the predictors of social CRM strategy adoption by small and medium enterprises (SMEs). The proposed model used in this study derived its theoretical support from IT/IS, marketing, and CRM literature. In the proposed Technology-Organization-Environment -Process (TOEP) adoption model, several hypotheses are developed which examine the role of Technological factors, such as Cost of Adoption, Relative Advantages, Complexity, and Compatibility; Organizational factors, such as IT/IS knowledge of employee, and Top management support; Environmental factors such as Competitive Pressure, and Customer Pressure; and Process factors such as Information Capture, Information Use, and Information Sharing; all having a positive relationship with social CRM adoption. This research applied a following two staged SEM-neural network method combining both structural equation modelling (SEM) and neural network analyses. The proposed hypothetical model is examined by using SEM on the collected data of SME5 in Kuala Lumpur, the central city of Malaysia. The SEM approach with a neural network method can be used to investigate the complicated relations involved in the adoption of social CRM. The study finds that compatibility, information capture, IT/IS knowledge of employee, top management support, information sharing, competitive pressure, cost, relative advantage, and customer pressure are the most important factors influencing social CRM adoption. Remarkably, the results of neural network analysis show that compatibility and information capture of social CRM are the most significant factors which affect SMEs' adoption of this form of customer relationship management. The outcomes of this research benefit executives: decision-making by identifying and ranking factors that enable them to discover how they can advance the usage of social CRM in their firms. Furthermore, the findings of this study can help the managers/owners of SME5 assign their resources, according to the ranking of social CRM adoption factors, when they are making plans to adopt social CRM. This study differs from previous studies as it proposes an innovative new approach to determine what influences the adoption of social CRM. By proposing the TOEP adoption model, additional information process factors advance the traditional TOE adoption model. (C) 2017 Elsevier Ltd. All rights reserved.
机译:社交媒体使用量的增长对客户关系管理(CRM)的旧观念提出了质疑。社交CRM战略是由社交媒体技术支持的CRM的新版本,它提供了一种有效管理与客户关系的新方法。这项研究旨在预测中小型企业(SME)采用社会CRM策略的预测因素。本研究中使用的提议模型从IT / IS,市场营销和CRM文献中获得了理论支持。在拟议的技术-组织-环境-过程(TOEP)采用模型中,提出了几种假设,以检验技术因素的作用,例如采用成本,相对优势,复杂性和兼容性。组织因素,例如员工的IT / IS知识以及高层管理人员的支持;环境因素,例如竞争压力和客户压力;和流程因素,例如信息捕获,信息使用和信息共享;所有这些都与采用社会CRM有着积极的关系。这项研究应用了以下两个阶段的SEM神经网络方法,结合了结构方程模型(SEM)和神经网络分析。通过使用SEM对马来西亚中部城市吉隆坡的SME5收集的数据进行检查,对提出的假设模型进行了检验。带有神经网络方法的SEM方法可用于调查采用社会CRM所涉及的复杂关系。研究发现,兼容性,信息捕获,员工的IT / IS知识,高层管理支持,信息共享,竞争压力,成本,相对优势和客户压力是影响社会CRM采用的最重要因素。值得注意的是,神经网络分析的结果表明,社交CRM的兼容性和信息捕获是影响中小企业采用这种形式的客户关系管理的最重要因素。这项研究的结果使管理人员受益:通过识别和排名因素的决策,使他们能够发现如何提高公司中社交CRM的使用率。此外,这项研究的结果可以帮助SME5的经理/所有者在制定计划采用社会CRM时根据社会CRM采用因素的排名来分配资源。这项研究与以前的研究不同,因为它提出了一种创新的新方法来确定什么因素会影响社会CRM的采用。通过提出TOEP采纳模型,其他信息处理因素可以促进传统的TOE采纳模型。 (C)2017 Elsevier Ltd.保留所有权利。

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