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Data, Methods and Theory in the Organizational Sciences explores the long-term evolution and changing relationships between data, methods, and theory in the organizational sciences. In the last 50 years, theory has come to dominate research and scholarship in these fields, yet the emergence of big data, as well as the increasing use of archival data sets and meta-analytic methods to test empirical hypotheses, has upset this order. This volume examines the evolving relationship between data, methods, and theory and suggests new ways of thinking about the role of each in the development and presentation of research in organizations. This volume utilizes the latest thinking from experts in a wide range of fields on the topics of data, methods, and theory and uses this knowledge to explore the ways in which behavior in organizations has been studied. This volume also argues that the current focus on theory is both unhealthy for the field and unsustainable, and it provides more successful ways theory can be used to support and structure research, and demonstrates the most effective techniques for analyzing and making sense of data. This is an essential resource for researchers, professionals, and educators who are looking to rethink their current approaches to research, and who are interested in creating more useful and more interpretable research in the organizational sciences.
Data, Methods and Theory in the Organizational Sciences explores the long-term evolution and changing relationships between data, methods, and theory in the organizational sciences. In the last 50 years, theory has come to dominate research and scholarship in these fields, yet the emergence of big data, as well as the increasing use of archival data sets and meta-analytic methods to test empirical hypotheses, has upset this order. This volume examines the evolving relationship between data, methods, and theory and suggests new ways of thinking about the role of each in the development and presentation of research in organizations. This volume utilizes the latest thinking from experts in a wide range of fields on the topics of data, methods, and theory and uses this knowledge to explore the ways in which behavior in organizations has been studied. This volume also argues that the current focus on theory is both unhealthy for the field and unsustainable, and it provides more successful ways theory can be used to support and structure research, and demonstrates the most effective techniques for analyzing and making sense of data. This is an essential resource for researchers, professionals, and educators who are looking to rethink their current approaches to research, and who are interested in creating more useful and more interpretable research in the organizational sciences.
The amount of data in our world has been exploding, and analyzing large data sets—so called big data—will become a key basis of competition in business. Statisticians and researchers will be updating their analytic approaches, methods and research to meet the demands created by the availability of big data. The goal of this book is to show how advances in data science have the ability to fundamentally influence and improve organizational science and practice. This book is primarily designed for researchers and advanced undergraduate and graduate students in psychology, management and statistics.
In both Management and I/O Psychology, contributions to theory remain an important, and in many cases, sole criterion for evaluating submissions to top journals. In many ways, the definition of theory and the primacy of theory in the organizational sciences is an outlier; in most sciences, articles rarely even mention theories, much less build themselves around advancing theory. We propose that the classic description of the scientific methods provides a better guide to understanding the relationships between data, methods and theory than our current model, which often starts and ends with proposing a theory, which may never again be referenced or tested. We describe a pyramid of types of evidence that is useful for assessing the reliability and worth of particular sorts of data and show how this approach to evidence informs the scientific method and assists in identifying and building useful theories.
Geisler argues that the over-reliance on co-variation techniques and statistical methods, instead of process approach and in-depth analysis, produces meaningless knowledge in the managerial and organizational sciences, and indeed throughout all the social sciences. He offers instead a new and different approach, based on the notion of what he calls dynamic morphologies—an architecture of slicing complex phenomena. This way it is possible to explain many inconsistencies in research findings, and to find a cohesive, systematic outlook on research, research design, and knowledge creation. Intellectually challenging and following in the footsteps of Kuhn, Argyris, and Popper, Geisler's approach is frankly revolutionary in research design and contains its own notions, terms, and nomenclature. A provocative discussion for academics and others well trained in the organizational, managerial, and social sciences. Geisler's dynamic morphologies provide a means to research complex phenomena and gain knowledge about them. They are composed of a chain of events, combined logically and temporally, and a method by which this process is studied. Geisler also contends that knowledge in the organizational and managerial sciences is only viable when it describes and explains the complex, higher-order phenomena. Therefore, theory building and research in these fields must be linked to higher-order constructs and the phenomena that they attempt to explain. This is the central notion of amplitude that Geisler introduces and describes. His book also criticizes the evolutionary epistemology view of knowledge creation and contends that knowledge in all of these fields of study in general is not evolutionary, but instead, cumulative and expansive.
`This text provides a timely and comprehensive introduction to major research methods in the Organizational sciences. It will be a boon to all students conducting their projects in this area, and may well become a standard reference for staff teaching research methods to undergraduate and postgraduate students of business studies or organizational behaviour′ - Professor Neil Anderson, Goldsmiths College, University of London ′This reasonably priced text would provide an invaluable starting point for those considering undertaking research in organisational settings′ - Paula Roberts, Nurse Researcher This book provides the reader with clear pointers for how to conduct organizational research appropriately, through planning and making informed and systematic research decisions, to understanding the ethical implications of applied organizational research, to implementing, reporting and presenting the findings to the highest possible standards. It provides an overview of a wide variety of research strategies, methods of data collection (both qualitative and quantitative) and analysis in a volume accessible to both an undergraduate, postgraduate and practitioner readership alike. Organizational Research Methods also represents a useful aid to the report writing task, indicating ways in which the project material can be most effectively organised for academic and feedback purposes, and by drawing upon real-life organizational contexts and examples to help the reader understand the core issues. Finally, the book offers a clear, manageable procedure for preparing a presentation to an academic or an organizational audience. Providing practical guidance on all elements of the research process, this book will be essential reading to all undergraduate and postgraduate students, as well as researchers, in psychology, organizational studies and management disciplines.
This book presents the elaboration model for the multivariate analysis of observational quantitative data. This model entails the systematic introduction of "third variables" to the analysis of a focal relationship between one independent and one dependent variable to ascertain whether an inference of causality is justified. Two complementary strategies are used: an exclusionary strategy that rules out alternative explanations such as spuriousness and redundancy with competing theories, and an inclusive strategy that connects the focal relationship to a network of other relationships, including the hypothesized causal mechanisms linking the focal independent variable to the focal dependent variable. The primary emphasis is on the translation of theory into a logical analytic strategy and the interpretation of results. The elaboration model is applied with case studies drawn from newly published research that serve as prototypes for aligning theory and the data analytic plan used to test it; these studies are drawn from a wide range of substantive topics in the social sciences, such as emotion management in the workplace, subjective age identification during the transition to adulthood, and the relationship between religious and paranormal beliefs. The second application of the elaboration model is in the form of original data analysis presented in two Analysis Journals that are integrated throughout the text and implement the full elaboration model. Using real data, not contrived examples, the text provides a step-by-step guide through the process of integrating theory with data analysis in order to arrive at meaningful answers to research questions.
The goal of the chapters in this SIOP Organizational Frontiers Series volume is to challenge researchers to break away from the rote application of traditional methodologies and to capitalize upon the wealth of data collection and analytic strategies available to them. In that spirit, many of the chapters in this book deal with methodologies that encourage organizational scientists to re-conceptualize phenomena of interest (e.g., experience sampling, catastrophe modeling), employ novel data collection strategies (e.g., data mining, Petri nets), and/or apply sophisticated analytic techniques (e.g., latent class analysis). The editors believe that these chapters provide compelling solutions for the complex problems faced by organizational researchers.
"Identifies dozens of myths, bad models, and unhelpful metaphors, replacing some with twenty-first century research and revealing gaps where research needs to be done ... Links the origins of theories about change to the history of ideas and suggests that the human sciences will provide real breakthroughs in our understanding of people in the twenty-first century ... Change fundamentally involves changing people's minds, yet the most recent research shows that provision of facts may 'strengthen' resistance ... will help you build influence, improve communication, optimize decision making, and sustain change"--Jacket.
This study on multilevel analysis cuts through the confusion surrounding the development and testing of multilevel theories. It illuminates processes and effects within organisations, synthesising and updating current theory.