Call for Papers for a Special Issue of the Journal of Information Technology on:
"Next-Generation Information Systems Research Methods"
Special Issue Editors:
Ivo Blohm, University of St. Gallen - Switzerland (corresponding Special Issue Editor: firstname.lastname@example.org<mailto:email@example.com>)
Susanna Ho, Australian National University - Australia Shaila Miranda, University of Oklahoma - USA Jan Marco Leimeister, University of St. Gallen - Switzerland
This special issue is interested in "next-generation" research methods for studying information technology (IT) phenomena - particularly in the information system (IS) research field. So far, IS researchers have applied a range of quantitative, qualitative and engaged methods to study IT-related phenomena. Quantitative IS research has often followed a positivist approach of hypothesis testing, with sometimes "first-generation" regression models distinguished from "second-generation" structural equation models (Gerow et al. 2011). Data used in such methods stems from surveys, experiments, panel studies, etc. The primary objective of this research stream typically is theory testing. Qualitative IS research has ranged from positivist to interpretivist, seeking rich situated insights via case studies, grounded theory or ethnographies. One objective of this research stream is theory construction. Critical and emancipatory IS research adds a strong value orientation and theoretical basis to qualitative research. Another type of IS research seeks to generate new knowledge with "engaged" methods like design science or action research. The objective of this stream that differentiates it from the first two is the focus on solving important individual, organizational or societal challenges; or extending the boundaries of human and organizational capabilities by creating new and innovative artifacts (Baskerville and Wood-Harper 1996; Hevner et al. 2004).
In recent years, the scope of and possibilities for IS research have tremendously widened. Digital IT have become mainstream at the individual, organizational and societal levels (Burton-Jones et al. 2021). Digital IT is key to innovation in various domains from medicine to education, from psychology to the arts. Hence, these domains have become of interest and relevance to IS researchers, yet also overlap with other fields and are hence interdisciplinary in nature. These innovations are increasing the volume and variety of trace data available to researchers but necessitate a shift in our research practices (Johnson et al. 2019). Further, big data, machine learning (ML) and artificial intelligence (AI) technologies provide a plethora of powerful approaches for collecting and analysing data at a scale not possible before such that we might need to adapt our research methods and tools to make this data actionable and to generate novel knowledge. These ML technologies are being applied not only to theory testing but also to theory construction - in conjunction with or independent of qualitative methods (Miranda et al. 2022).
This special issue focuses on the next generation of research methods to study IT - new methods relevant to the IS research field that account for a) the interdisciplinary nature and wider scope of IT phenomena, and/or b) the novel capacities afforded by new technologies/techniques (e.g., ML/AI).
The way that novel technologies and techniques afford new possibilities is quite apparent in quantitative IS research. In contrast to "first-generation" regression-based approaches and "second-generation" structural equation modelling, a new generation of research methods including the predictive analytics (Shmueli and Koppius 2011), data mining (Smith 2020), ML (Shrestha et al. 2020) or explainable AI (Gunning et al. 2019) come with substantial new opportunities and challenges. For instance, these methods potentially allow for more fine-grained measurements and analyses to extend our knowledge of existing phenomena and may help us study novel phenomena including those that were, methodologically speaking, "out of reach" (George et al. 2016). These technological advancements enable us to progress our research toolkit and inform new ways of generating knowledge and theorizing (Burton-Jones et al. 2021; Shrestha et al. 2020). Increased recognition of abduction as a counterpart to deductive and inductive reasoning (Behfar and Okhuysen 2018; Sætre and Van de Ven 2021) pits concerns about practices such as HARKing (Kerr 1998) - hypothesizing after the results are known (aka p-hacking) - believed to lead to logically and scientifically flawed hypotheses, against concerns about stifling the advancement of knowledge (Pratt et al. 2019). ML/AI techniques are now so powerful that they can test millions of models on large data sets to find the "best-matching" model (of all possible) for what needs to be explained. This is a fundamental gear change in what can be done with quantitative data sets, the promise and validity of which are hotly debated (Kitchin 2014; Smith 2020).
In terms of changes to the nature of the IS domains, qualitative-interpretative researchers seek to find new methods suitable for the wider, interdisciplinary scope of IS research. This is done via finding or developing analytical new grounds and looking at digital IT differently (e.g. via sociomaterial or affordances perspectives), seeking additional foundations in other fields (e.g., Zuboff's (2015) political economy informed analysis of surveillance capitalism and "Big Tech") or via the modification of methods to suit digital environments (e.g., virtual ethnographies or computational grounded theory). Other forms of qualitative research such as meta-synthesis, qualitative comparative analysis and discourse analysis also seem promising and relevant but are seldomly used in IS research. Digital IT (e.g., social media, digital platforms, AI/ML) has increasing and substantial impacts on society (e.g., mental health, trust in science, misinformation and polarization, monopolization and industry disruption). Hence, ethical, critical, value-based and political-economy questions are increasingly and necessarily asked about digital IT. Similarly, today's pace of innovation may also warrant novel approaches to engaged scholarship and design science. For instance, researchers are calling for methods that can accumulate and update evidence more effectively (Lacity et al. 2021) and better ensure the generalizability of prescriptive knowledge (Brendel et al. 2021; Iivari et al. 2021).
This special issue invites contributions that propose, introduce, debate or critique novel quantitative, qualitative or design-oriented methods research, with a focus on the "how" (i.e., origins, processes, steps of the method) and the "why" (e.g., "rigour vs relevance" and "it is new, but is it better" questions) these approaches should be used in IS research. The goal of the special issue is to provide a space for introducing and discussing innovative "next-generation" methods for studying IT-related phenomena, relative to the IS research field.
Papers may focus on, but are not restricted to, the following themes:
* Critical reflection of research methods used in IS.
* Introducing new qualitative, quantitative or design research methods.
* Transferability of non-IS research methods such as from other fields or praxis.
* Novel combinations of research methods such as cross-disciplinary or mixed-method approaches.
* Innovative approaches to analyse big data.
* Approaches dealing with special types of unstructured data.
* Problems of null hypothesis testing via big data and AI/ML.
* AI, ML and explainable AI for knowledge creation and theory generation.
* Transparent, robust and replicable research designs and methodologies.
* Transferability and generalizability of insights generated with specific methods.
* Approaches to evaluating and communicating practical relevance of findings.
* Critical assessment of novel approaches on practical, conceptual, ethical or philosophical grounds.
* Philosophy of science-based proposals for or critiques of methods.
* Culture and values-driven proposals for or critiques of methods.
* Methods to study the past, the present and/or the future.
* Journal of Information Technology special issue papers will go through no more than two full rounds of peer review.
* Submissions to the Journal of Information Technology special issue should follow the regular rules for research paper submissions, selecting the special issue as the submission type and its corresponding special issue editor as suggested Senior Editor to handle the submission.
* Submission system: https://mc.manuscriptcentral.com/jin
* Submission system FAQ: https://clarivate.com/webofsciencegroup/support/scholarone-manuscripts/faqs-help
* JIT homepage: https://journals.sagepub.com/home/jin
* JIT submission guidelines: https://journals.sagepub.com/author-instructions/JIN
* Abstract submissions: November 20, 2022. (optional; authors are invited to submit extended abstracts of papers for early reactions)
* Special issue workshop at ICIS 2022. (online participation possible; based on submitted abstracts, authors have the opportunity to present and discuss their paper ideas. For more information see: https://anu.au1.qualtrics.com/jfe/form/SV_0NZsFU8VQhuYj6m)
* First-round submissions: April 15, 2023.
* First-round decisions: July 15, 2023.
* Second-round submissions: December 15, 2023.
* Second-round decisions: February 15, 2024. (papers are either acceptable with minor changes or rejected at this stage)
* Final versions due: May 15, 2024. (final decisions and online publication soon afterwards)
Baskerville, R. L., and Wood-Harper, A. T. 1996. "A Critical Perspective on Action Research as a Method for Information Systems Research", Journal of Information Technology (11:3), pp. 235-246.
Behfar, K., and Okhuysen, G. A. 2018. "Perspective-Discovery within Validation Logic: Deliberately Surfacing, Complementing, and Substituting Abductive Reasoning in Hypothetico-Deductive Inquiry", Organization Science (29:2), pp. 323-340.
Brendel, A. B., Lembcke, T.-B., Muntermann, J., and Kolbe, L. M. 2021. "Toward Replication Study Types for Design Science Research", Journal of Information Technology (36:3), pp. 198-215.
Burton-Jones, A., Butler, B. S., Scott, S. V., and (Xin), S. 2021. "Next-Generation Information Systems Theorizing: A Call to Action", MIS Quarterly (45:1), pp. 301-314.
George, G., Osinga, E. C., Lavie, D., and Scott, B. A. 2016. "Big Data and Data Science Methods for Management Research", Academy of Management Journal (59:5), pp. 1493-1507.
Gerow, J. E., Grover, V., Roberts, N., and Thatcher, J. B. 2011. "The Diffusion of Second-Generation Statistical Techniques in Information Systems Research from 1990-2008", Journal of Information Technology Theory and Application (11:4), p. 2.
Gunning, D., Stefik, M., Choi, J., Miller, T., Stumpf, S., and Yang, G.-Z. 2019. "Explainable Artificial Intelligence", Science Robotics (4:37), eaay7120.
Hevner, A., March, S. T., Park, J., and Ram, S. 2004. "Design Science Research in Information Systems", MIS quarterly (28:1), pp. 75-105.
Iivari, J., Rotvit Perlt Hansen, M., and Haj-Bolouri, A. 2021. "A Proposal for Minimum Reusability Evaluation of Design Principles", European Journal of Information Systems (30:3), pp. 286-303.
Johnson, S. L., Gray, P., and Sarker, S. 2019. "Revisiting Is Research Practice in the Era of Big Data", Information and organization (29:1), pp. 41-56.
Kerr, N. L. 1998. "Harking: Hypothesizing after the Results Are Known", Personality and Social Psychology Review (2:3), pp. 196-217.
Kitchin, R. 2014. "Big Data, New Epistemologies and Paradigm Shifts", Big Data & Society (1:1), p. 2053951714528481.
Lacity, M., Willcocks, L., and Gozman, D. 2021. "Influencing Information Systems Practice: The Action Principles Approach Applied to Robotic Process and Cognitive Automation", Journal of Information Technology (36:3), pp. 216-240.
Miranda, S., Berente, N., Seidel, S., Safadi, H., and Burton-Jones, A. 2022. "Editor's Comments: Computationally Intensive Theory Construction: A Primer for Authors and Reviewers", MIS Quarterly (46), pp. iii-xviii.
Pratt, M. G., Kaplan, S., and Whittington, R. 2019. "Editorial Essay: The Tumult over Transparency: Decoupling Transparency from Replication in Establishing Trustworthy Qualitative Research", Administrative Science Quarterly (65:1), pp. 1-19.
Sætre, A. S., and Van de Ven, A. 2021. "Generating Theory by Abduction", Academy of Management Review (46:4), pp. 684-701.
Shmueli, G., and Koppius, O. R. 2011. "Predictive Analytics in Information Systems Research", MIS Quarterly (35:3), pp. 553-572.
Shrestha, Y. R., He, V. F., Puranam, P., and von Krogh, G. 2020. "Algorithm Supported Induction for Building Theory: How Can We Use Prediction Models to Theorize?", Organization Science (32:3), pp. 856-880.
Smith, G. 2020. "Data Mining Fool's Gold", Journal of Information Technology (35:3), pp. 182-194.
Zuboff, S. 2015. "Big Other: Surveillance Capitalism and the Prospects of an Information Civilization", Journal of Information Technology (30:1), pp. 75-89.