Assessing the impact of big data analytics on decision-making processes, forecasting, and performance of a firm
暂无分享,去创建一个
[1] M. Meadows,et al. Leveraging big data for strategic marketing: A dynamic capabilities model for incumbent firms , 2023, Technological Forecasting and Social Change.
[2] Tony C. Garrett,et al. Does customer participation moderate the effects of innovation on cost-based financial performance? An examination of different forms of customer participation , 2023, Journal of Business Research.
[3] Fang‐Yi Lo,et al. How does top management team diversity influence firm performance? A causal complexity analysis , 2023, Technological Forecasting and Social Change.
[4] Mohammad Zoynul Abedin,et al. How do climate risk and clean energy spillovers, and uncertainty affect U.S. stock markets? , 2022, Technological Forecasting and Social Change.
[5] Hyoung-Yong Choi,et al. Do data-driven CSR initiatives improve CSR performance? The importance of big data analytics capability , 2022, Technological Forecasting and Social Change.
[6] Mohammad Zoynul Abedin,et al. Deep-learning model using hybrid adaptive trend estimated series for modelling and forecasting sales , 2022, Annals of Operations Research.
[7] Hsiao-Ting Tseng,et al. Customer agility and big data analytics in new product context , 2022, Technological Forecasting and Social Change.
[8] D. Vrontis,et al. SME entrepreneurship and digitalization – the potentialities and moderating role of demographic factors , 2022, Technological Forecasting and Social Change.
[9] Paolo Neirotti,et al. Algorithms for operational decision-making: An absorptive capacity perspective on the process of converting data into relevant knowledge , 2021 .
[10] Marijn Janssen,et al. Data science as knowledge creation a framework for synergies between data analysts and domain professionals , 2021, Technological Forecasting and Social Change.
[11] D. Vrontis,et al. Adoption of robust business analytics for product innovation and organizational performance: the mediating role of organizational data-driven culture , 2021, Annals of Operations Research.
[12] D. Vrontis,et al. Does remote work flexibility enhance organization performance? Moderating role of organization policy and top management support , 2021, Journal of Business Research.
[13] Nripendra P. Rana,et al. Assessing Organizational Users’ Intentions and Behavior to AI Integrated CRM Systems: a Meta-UTAUT Approach , 2021, Information Systems Frontiers.
[14] T. Daim,et al. Technology assessment: Enabling Blockchain in hospitality and tourism sectors , 2021, Technological Forecasting and Social Change.
[15] Ranjan Chaudhuri,et al. Supply chain sustainability during turbulent environment: Examining the role of firm capabilities and government regulation , 2021, Operations Management Research.
[16] Junliang Wang,et al. Big data analytics for intelligent manufacturing systems: A review , 2021 .
[17] Sheshadri Chatterjee,et al. Digital transformation and entrepreneurship process in SMEs of India: a moderating role of adoption of AI-CRM capability and strategic planning , 2021, Journal of Strategy and Management.
[18] D. Vrontis,et al. Knowledge sharing in international markets for product and process innovation: moderating role of firm's absorptive capacity , 2021 .
[19] I. Gati,et al. Making better career decisions: From challenges to opportunities , 2021 .
[20] Nripendra P. Rana,et al. How does business analytics contribute to organisational performance and business value? A resource-based view , 2021, Inf. Technol. People.
[21] Md Shajalal,et al. Product backorder prediction using deep neural network on imbalanced data , 2021, Int. J. Prod. Res..
[22] Rhema Vaithianathan,et al. Sibyl: Understanding and Addressing the Usability Challenges of Machine Learning In High-Stakes Decision Making , 2021, IEEE Transactions on Visualization and Computer Graphics.
[23] Chia-Wen Tsai,et al. Impact of peer influence and government support for successful adoption of technology for vocational education: A quantitative study using PLS-SEM technique , 2021, Quality & Quantity.
[24] Azlina Abdul Jalil,et al. Auditor judgment and decision-making in big data environment: a proposed research framework , 2021 .
[25] B. Nguyen,et al. Value co-creation and social media at bottom of pyramid (BOP) , 2021 .
[26] Shahriar Akter,et al. Reshaping competitive advantages with analytics capabilities in service systems , 2020, Technological Forecasting and Social Change.
[27] Angappa Gunasekaran,et al. Big data analytics and artificial intelligence pathway to operational performance under the effects of entrepreneurial orientation and environmental dynamism: A study of manufacturing organisations , 2020, International Journal of Production Economics.
[28] Parijat Upadhyay,et al. The intermediating role of organizational culture and internal analytical knowledge between the capability of big data analytics and a firm's performance , 2020, Int. J. Inf. Manag..
[29] Sheshadri Chatterjee,et al. Antecedents of phubbing: from technological and psychological perspectives , 2020, J. Syst. Inf. Technol..
[30] Shahriar Akter,et al. The performance effects of big data analytics and supply chain ambidexterity: The moderating effect of environmental dynamism , 2020 .
[31] Petr Hajek,et al. A Profit Function-Maximizing Inventory Backorder Prediction System Using Big Data Analytics , 2020, IEEE Access.
[32] Mohamed Elhoseny,et al. Special issue on cognitive big data analytics for business intelligence applications: Towards performance improvement , 2020, Int. J. Inf. Manag..
[33] Sheshadri Chatterjee. Impact of AI regulation on intention to use robots , 2019 .
[34] Fotios Petropoulos,et al. Déjà vu: A data-centric forecasting approach through time series cross-similarity , 2019 .
[35] Wan Khairuzzaman Wan Ismail,et al. Big Data Analytics and Firm Performance: A Systematic Review , 2019, Inf..
[36] Patrick Mikalef,et al. Big Data Analytics Capabilities and Innovation: The Mediating Role of Dynamic Capabilities and Moderating Effect of the Environment , 2019, British Journal of Management.
[37] Sheshadri Chatterjee,et al. Influence of IoT Policy on Quality of Life: From Government and Citizens' Perspectives , 2019, Int. J. Electron. Gov. Res..
[38] Angappa Gunasekaran,et al. Big Data and Predictive Analytics and Manufacturing Performance: Integrating Institutional Theory, Resource‐Based View and Big Data Culture , 2019, British Journal of Management.
[39] Russell Torres,et al. Enabling firm performance through business intelligence and analytics: A dynamic capabilities perspective , 2018, Inf. Manag..
[40] Morgan Swink,et al. An Investigation of Visibility and Flexibility as Complements to Supply Chain Analytics: An Organizational Information Processing Theory Perspective , 2018 .
[41] Arafat Salih Aydiner,et al. Business analytics and firm performance: The mediating role of business process performance , 2018, Journal of Business Research.
[42] R. Adams,et al. Data supply chain (DSC): research synthesis and future directions , 2018, Int. J. Prod. Res..
[43] Ned Kock,et al. Minimum sample size estimation in PLS‐SEM: The inverse square root and gamma‐exponential methods , 2018, Inf. Syst. J..
[44] Shih-Chia Huang,et al. Big Data Analytics and Business Intelligence in Industry , 2017, Inf. Syst. Frontiers.
[45] Benjamin T. Hazen,et al. Examining the effect of external pressures and organizational culture on shaping performance measurement systems (PMS) for sustainability benchmarking: Some empirical findings , 2017 .
[46] Pervaiz Akhtar,et al. The Internet of Things, dynamic data and information processing capabilities, and operational agility , 2017, Technological Forecasting and Social Change.
[47] Moutusy Maity,et al. Adolescent's eWOM intentions: An investigation into the roles of peers, the Internet and gender , 2017 .
[48] Alain Yee-Loong Chong,et al. An updated and expanded assessment of PLS-SEM in information systems research , 2017, Ind. Manag. Data Syst..
[49] Eric T. Bradlow,et al. The Role of Big Data and Predictive Analytics in Retailing , 2017 .
[50] Henri Schildt,et al. Big data and organizational design – the brave new world of algorithmic management and computer augmented transparency , 2017 .
[51] A. Gunasekaran,et al. Big data analytics in logistics and supply chain management: Certain investigations for research and applications , 2016 .
[52] Roger H. L. Chiang,et al. Big Data Research in Information Systems: Toward an Inclusive Research Agenda , 2016, J. Assoc. Inf. Syst..
[53] Morgan Swink,et al. How the Use of Big Data Analytics Affects Value Creation in Supply Chain Management , 2015, J. Manag. Inf. Syst..
[54] Daniel S. J. Costa,et al. Testing complex models with small sample sizes: A historical overview and empirical demonstration of what Partial Least Squares (PLS) can offer differential psychology , 2015 .
[55] Sheshadri Chatterjee. E-Commerce in India: A review on culture and challenges , 2015, 2015 International Conference on Soft Computing Techniques and Implementations (ICSCTI).
[56] Vasant Dhar,et al. Editorial - Big Data, Data Science, and Analytics: The Opportunity and Challenge for IS Research , 2014, Inf. Syst. Res..
[57] D. Teece. The Foundations of Enterprise Performance: Dynamic and Ordinary Capabilities in an (Economic) Theory of Firms , 2014 .
[58] Oliver Schilke. On the Contingent Value of Dynamic Capabilities for Competitive Advantage: The Nonlinear Moderating Effect of Environmental Dynamism , 2014 .
[59] Prasanna Tambe. Big Data Investment, Skills, and Firm Value , 2014, Manag. Sci..
[60] Rajdeep Grewal,et al. Information Technology Competencies, Organizational Agility, and Firm Performance: Enabling and Facilitating Roles , 2013, Inf. Syst. Res..
[61] Maria R. Lee,et al. Leveraging Big Data and Business Analytics , 2013, IT Prof..
[62] David J. Teece,et al. Dynamic Capabilities: Routines versus Entrepreneurial Action , 2012 .
[63] Fujun Lai,et al. Using Partial Least Squares in Operations Management Research: A Practical Guideline and Summary of Past Research , 2012 .
[64] Sabah Agha,et al. Effect of Core Competence on Competitive Advantage and Organizational Performance , 2011 .
[65] D. Teece,et al. Introduction: On the nature and scope of dynamic capabilities , 2010 .
[66] Li Jiang,et al. Trust and Electronic Government Success: An Empirical Study , 2008, J. Manag. Inf. Syst..
[67] Jung P. Shim,et al. An exploratory study of radio frequency identification (RFID) adoption in the healthcare industry , 2007, Eur. J. Inf. Syst..
[68] Li Ling-yee,et al. Marketing resources and performance of exhibitor firms in trade shows: A contingent resource perspective , 2007 .
[69] Roger G. Schroeder,et al. Perceptual measures of performance: Fact or fiction? , 2004 .
[70] S. Winter. Understanding dynamic capabilities , 2003 .
[71] Scott B. MacKenzie,et al. Common method biases in behavioral research: a critical review of the literature and recommended remedies. , 2003, The Journal of applied psychology.
[72] M. Lindell,et al. Accounting for common method variance in cross-sectional research designs. , 2001, The Journal of applied psychology.
[73] D. Teece,et al. DYNAMIC CAPABILITIES AND STRATEGIC MANAGEMENT , 1997 .
[74] J. Barney. Firm Resources and Sustained Competitive Advantage , 1991 .
[75] C. Fornell,et al. Evaluating Structural Equation Models with Unobservable Variables and Measurement Error , 1981 .
[76] Terry S. Overton,et al. Estimating Nonresponse Bias in Mail Surveys , 1977 .
[77] Benjamin T. Hazen,et al. Big data and predictive analytics for supply chain and organizational performance , 2017 .
[78] Shahriar Akter,et al. Big data analytics and firm performance: Effects of dynamic capabilities , 2017 .
[79] M. Sarstedt,et al. A new criterion for assessing discriminant validity in variance-based structural equation modeling , 2015 .
[80] M. C. Holcomb,et al. Performance outcomes of supply chain agility: When should you be agile? , 2015 .
[81] Wynne W. Chin. How to Write Up and Report PLS Analyses , 2010 .
[82] P. Bentler,et al. Fit indices in covariance structure modeling : Sensitivity to underparameterized model misspecification , 1998 .
[83] Muhammad Sabbir Rahman,et al. Big data analytics and artificial intelligence technologies based collaborative platform empowering absorptive capacity in health care supply chain: An empirical study , 2023, Journal of Business Research.