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Analyzing the factors influencing cloud computing adoption using three stage hybrid SEM-ANN-ISM (SEANIS) approach

机译:使用三阶段混合SEM-ANN-ISM(SEANIS)方法分析影响云计算采用的因素

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摘要

This investigation aims to propose a hybrid three-stage Structural Equation Modeling (SEM) - Artificial Neural Network (ANN) - Interpretive Structural Modeling (ISM) approach, together abbreviated as the SEANIS, for analyzing the factors influencing cloud computing adoption (CCA) services in the context of Indian private organizations. This study proposed new determinants, namely risk analysis and perceived IT security risk as an extension of the Technology Organization Environment (TOE) model. The data collected from the industry experts were analyzed using SEM and ANN approaches. The results of SEM revealed that trust (T), management style (MS), technology innovation (TI), risk analysis (RA), and perceived IT security risk (PITR) exercised a significant influence on CCA. The SEM results were taken as inputs for the ANN approach and ISM methodology. The results of ANN highlighted that perceived IT security risk, trust, and management style were the most important determinants for CCA. On the other hand, the ISM tool identified five factors, namely, decrease of internal systems availability (F1) (PITR cluster), utilization of internal resources (F14) (MS cluster), assurance of data privacy increases adoption rate (F16) (T cluster), innovativeness (F21), and previous experience (F22) (both from the TI cluster) as the top five significant variables with high driving power, among the 43 factors. The outcome of the hybrid approach is intended to guide the decision and policy-makers for easy evaluation of their organizational goals for choosing the most suitable computing environment for improving the efficiency and effectiveness of their business performance.
机译:这项研究旨在提出一种混合的三阶段结构方程模型(SEM)-人工神经网络(ANN)-解释性结构模型(ISM)方法(简称为SEANIS),用于分析影响云计算采用(CCA)服务的因素在印度私人组织的背景下。这项研究提出了新的决定因素,即风险分析和可感知的IT安全风险,作为技术组织环境(TOE)模型的扩展。使用SEM和ANN方法分析了从行业专家那里收集的数据。 SEM的结果表明,信任(T),管理风格(MS),技术创新(TI),风险分析(RA)和可感知的IT安全风险(PITR)对CCA产生了重大影响。 SEM结果被用作ANN方法和ISM方法的输入。 ANN的结果突出表明,感知到的IT安全风险,信任和管理方式是CCA的最重要决定因素。另一方面,ISM工具确定了五个因素,即内部系统可用性(F1)(PITR群集)的减少,内部资源的利用率(F14)(MS群集),数据隐私保证提高了采用率(F16)( T集群),创新性(F21)和以前的经验(F22)(均来自TI集群)是在43个因素中具有高驱动力的前五个重要变量。混合方法的结果旨在指导决策者和决策者轻松评估其组织目标,以选择最合适的计算环境以提高其业务绩效的效率和有效性。

著录项

  • 来源
    《Technological forecasting and social change》 |2018年第9期|98-123|共26页
  • 作者单位

    Natl Inst Ind Engn NITIE, Operat & Supply Chain Management, Room 211,Adm Bldg,2nd Floor, Bombay 87, Maharashtra, India;

    Prin LN Welingkar Inst Management Dev & Res, PGDM Reasearch & Business Analyt, Lakhamshi Napoo Rd, Bombay 400019, Maharashtra, India;

    Mech Engn Dept, 8 Saboo Siddik Polytech Rd, Bombay 400008, Maharashtra, India;

    Natl Inst Ind Engn NITIE, Mkt Management, Bombay 87, Maharashtra, India;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cloud computing adoption; SEM; ANN; ISM; MCDM; SEANIS;

    机译:云计算采用;SEM;ANN;ISM;MCDM;SEANIS;

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