Simon Lindgren

Data Theory


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especially when researching sociality and politics through the internet. The book emphasises the need to think freely and openly about both theory and method, and goes beyond some of the ways of doing social research that are dominant today. It does so by playfully and tentatively combining elements of theories and methods, some of which are commonly seen as being incompatible.

      In the face of the availability of new types of digital research data, and the contemporary popularity of computational methods in an increasing range of scholarly fields, the book should be read as an explorative attempt to make synergetic gains by harnessing the respective powers of interpretive social analysis and computational methods within one and the same research framework. This is not to say that the proposed hybrid approach must replace any other existing approach, but I want to explore potential points of contact between some concepts and strategies that are not regularly combined.

      Furthermore, the proposal that I make in this book is meant to be modest. A significant amount of valuable and important work has already been done, and continues to be carried out, along the rough lines that I am suggesting, by scholars in fields such as science, technology, and society studies (Marres, 2017), mixed methods research (Hesse-Biber and Griffin, 2013), analytical sociology (Keuschnigg, Lovsjö, and Hedström, 2018), and computational social science (Lazer et al., 2009). In developing my contribution to the discussion of how the data/theory equation can be balanced in contemporary data-driven social research, I draw on influences from all of these areas. In addition, there is a vast literature in the area of the philosophy of science, where I am by no means an expert, but with which the book still sometimes enters into partial dialogue. Therefore, the book should be read for what it is – that is, an account by an alleged ‘qualitative’ sociologist entering the field of computational methods, with the aim of tracing the outlines of a hybrid methodological position potentially to be held, not in particular by data scientists or computational social scientists, nor by digital ethnographers or anthropologists, but by scholars wanting to maintain an interpretative sociological framework for analysis, while incorporating computational methods that follow society’s datafication.

      The second chapter, Decoding Social Forms, turns to the empirical subject area of the book – social media politics – and continues the discussion about how to research complex sociality. Social research, and its object of study (society), are equally messy, in ways that should be embraced rather than avoided. In addressing how social theory can help in navigating the complexities, the chapter covers a set of key concepts, drawing on classic sociological theorists such as Weber, Durkheim, and Simmel.

      The third chapter, Unintended Consequences, continues to make the argument that pre-digital social theory can be repurposed to make sense of ambivalent sociality in a datafied society. In the chapter, we approach US President Donald Trump’s infamous ‘covfefe’ tweet from the perspective of the sociology of unanticipated consequences, in order to disentangle its surrounding twisted web of tweets, talk, and discourse. This is a case study, presented before we delve deeper into the territory of computational methods in the chapters that follow, to illustrate how social theory can aid the disentanglement of ambivalent online social practice. In this particular case, we will take help from sociologist Robert K. Merton’s perspective on the sometimes unpredictable, and possibly ambivalent, relationships between what people do, or intend, and the outcomes of those actions.