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  1. La Ricerca Scientifica nell'Era dei Big Data.Sabina Leonelli - 2018 - Meltemi.
    "Scientific Research in the Era of Big Data" - this book was also published in French (Mimesis) in 2019 and in Portuguese in 2022 (FIOCRUZ editors).
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  • Data Journeys in the Sciences.Sabina Leonelli & Niccolò Tempini (eds.) - 2020 - Springer.
    This groundbreaking, open access volume analyses and compares data practices across several fields through the analysis of specific cases of data journeys. It brings together leading scholars in the philosophy, history and social studies of science to achieve two goals: tracking the travel of data across different spaces, times and domains of research practice; and documenting how such journeys affect the use of data as evidence and the knowledge being produced. The volume captures the opportunities, challenges and concerns involved in (...)
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  • Electricity as (Big) Data: Metering, spatiotemporal granularity and value.Gordon Walker & Mette Kragh-Furbo - 2018 - Big Data and Society 5 (1).
    Electricity is hidden within wires and networks only revealing its quantity and flow when metered. The making of its properties into data is therefore particularly important to the relations that are formed around electricity as a produced and managed phenomenon. We propose approaching all metering as a situated activity, a form of quantification work in which data is made and becomes mobile in particular spatial and temporal terms, enabling its entry into data infrastructures and schemes of evaluation and value production. (...)
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  • The locus of legitimate interpretation in Big Data sciences: Lessons for computational social science from -omic biology and high-energy physics.Neil Stephens, Luis Reyes-Galindo, Jamie Lewis & Andrew Bartlett - 2018 - Big Data and Society 5 (1).
    This paper argues that analyses of the ways in which Big Data has been enacted in other academic disciplines can provide us with concepts that will help understand the application of Big Data to social questions. We use examples drawn from our Science and Technology Studies analyses of -omic biology and high energy physics to demonstrate the utility of three theoretical concepts: primary and secondary inscriptions, crafted and found data, and the locus of legitimate interpretation. These help us to show (...)
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  • The urban geographical imagination in the age of Big Data.Taylor Shelton - 2017 - Big Data and Society 4 (1).
    This paper explores the variety of ways that emerging sources of data are being used to re-conceptualize the city, and how these understandings of what the urban is shapes the design of interventions into it. Drawing on work on the performativity of economics, this paper uses two vignettes of the ‘new urban science’ and municipal vacant property mapping in order to argue that the mobilization of Big Data in the urban context doesn’t necessarily produce a single, greater understanding of the (...)
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  • Algorithmic governance: Developing a research agenda through the power of collective intelligence.Kalpana Shankar, Burkhard Schafer, Niall O'Brolchain, Maria Helen Murphy, John Morison, Su-Ming Khoo, Muki Haklay, Heike Felzmann, Aisling De Paor, Anthony Behan, Rónán Kennedy, Chris Noone, Michael J. Hogan & John Danaher - 2017 - Big Data and Society 4 (2).
    We are living in an algorithmic age where mathematics and computer science are coming together in powerful new ways to influence, shape and guide our behaviour and the governance of our societies. As these algorithmic governance structures proliferate, it is vital that we ensure their effectiveness and legitimacy. That is, we need to ensure that they are an effective means for achieving a legitimate policy goal that are also procedurally fair, open and unbiased. But how can we ensure that algorithmic (...)
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  • ‘End of Theory’ in the Era of Big Data: Methodological Practices and Challenges in Social Media Studies.Anu Masso, Maris Männiste & Andra Siibak - 2020 - Acta Baltica Historiae Et Philosophiae Scientiarum 8 (1):33-61.
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  • Data Analysis Method of Intelligent Analysis Platform for Big Data of Film and Television.Youwen Ma & Yi Wan - 2021 - Complexity 2021:1-10.
    Based on cloud computing and statistics theory, this paper proposes a reasonable analysis method for big data of film and television. The method selects Hadoop open source cloud platform as the basis, combines the MapReduce distributed programming model and HDFS distributed file storage system and other key cloud computing technologies. In order to cope with different data processing needs of film and television industry, association analysis, cluster analysis, factor analysis, and K-mean + association analysis algorithm training model were applied to (...)
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  • Theory of Knowledge Based on the Idea of the Discursive Space.Rafal Maciag - 2022 - Philosophies 7 (4):72.
    This paper discusses the theory of knowledge based on the idea of dynamical space. The goal of this effort is to comprehend the knowledge that remains beyond the human domain, e.g., of the artificial cognitive systems. This theory occurs in two versions, weak and strong. The weak version is limited to knowledge in which retention and articulation are performed through the discourse. The strong version is general and is not limited in any way. In the weak version, knowledge is represented (...)
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  • A place for Big Data: Close and distant readings of accessions data from the Arnold Arboretum.Yanni Alexander Loukissas - 2016 - Big Data and Society 3 (2).
    Place is a key concept in environmental studies and criticism. However, it is often overlooked as a dimension of situatedness in social studies of information. Rather, situatedness has been defined primarily as embodiment or social context. This paper explores place attachments in Big Data by adapting close and distant approaches for reading texts to examine the accessions data of the Arnold Arboretum, a living collection of trees, vines and shrubs established by Harvard University in 1872. Although it is an early (...)
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  • Big Data Dreams and Reality in Shenzhen: An Investigation of Smart City Implementation in China.Genia Kostka & Jelena Große-Bley - 2021 - Big Data and Society 8 (2).
    Chinese cities are increasingly using digital technologies to address urban problems and govern society. However, little is known about how this digital transition has been implemented. This study explores the introduction of digital governance in Shenzhen, one of China's most advanced smart cities. We show that, at the local level, the successful implementation of digital systems faces numerous hurdles in long-standing data management and bureaucratic practices that are at least as challenging as the technical problems. Furthermore, the study finds that (...)
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  • Ethical Issues in Social Science Research Employing Big Data.Mohammad Hosseini, Michał Wieczorek & Bert Gordijn - 2022 - Science and Engineering Ethics 28 (3):1-21.
    This paper analyzes the ethics of social science research employing big data. We begin by highlighting the research gap found on the intersection between big data ethics, SSR and research ethics. We then discuss three aspects of big data SSR which make it warrant special attention from a research ethics angle: the interpretative character of both SSR and big data, complexities of anticipating and managing risks in publication and reuse of big data SSR, and the paucity of regulatory oversight and (...)
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  • Mundane data: The routines, contingencies and accomplishments of digital living.Christine Heyes La Bond, Deborah Lupton, Shanti Sumartojo & Sarah Pink - 2017 - Big Data and Society 4 (1).
    This article develops and mobilises the concept of ‘mundane data’ as an analytical entry point for understanding Big Data. We call for in-depth investigation of the human experiences, routines, improvisations and accomplishments which implicate digital data in the flow of the everyday. We demonstrate the value of this approach through a discussion of our ethnographic research with self-tracking cycling commuters. We argue that such investigations are crucial in informing our understandings of how digital data become meaningful in mundane contexts of (...)
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  • Turning biases into hypotheses through method: A logic of scientific discovery for machine learning.Maja Bak Herrie & Simon Aagaard Enni - 2021 - Big Data and Society 8 (1).
    Machine learning systems have shown great potential for performing or supporting inferential reasoning through analyzing large data sets, thereby potentially facilitating more informed decision-making. However, a hindrance to such use of ML systems is that the predictive models created through ML are often complex, opaque, and poorly understood, even if the programs “learning” the models are simple, transparent, and well understood. ML models become difficult to trust, since lay-people, specialists, and even researchers have difficulties gauging the reasonableness, correctness, and reliability (...)
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  • Analysing discourse around COVID-19 in the Australian Twittersphere: A real-time corpus-based analysis.Sam Hames, Michael Haugh & Martin Schweinberger - 2021 - Big Data and Society 8 (1).
    Public discourse about the COVID-19 that appears on Twitter and other social media platforms provides useful insights into public concerns and responses to the pandemic. However, acknowledging that public discourse around COVID-19 is multi-faceted and evolves over time poses both analytical and ontological challenges. Studies that use text-mining approaches to analyse responses to major events commonly treat public discourse on social media as an undifferentiated whole, without systematically examining the extent to which that discourse consists of distinct sub-discourses or which (...)
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  • Does ‘big data’ provide a competitive advantage to firms: an antitrust analysis.Garima Gupta - 2022 - Asian Journal of Business Ethics 11 (2):423-442.
    Today’s economy has transitioned from the traditional brick and mortar structure of doing business to that of digitalized economy. The latter functions with the aid of technological tools with ‘data’ being the most significant tool in today’s context. The issue has become even more critical with the advent of ‘big data’. It is argued that accumulation, analysis and usage of ‘big data’ enable creation of varied forms of entry barriers for new entrants and information asymmetries for customers which in turn (...)
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  • Practicing, materialising and contesting environmental data.Jennifer Gabrys - 2016 - Big Data and Society 3 (2).
    While there are now an increasing number of studies that critically and rigorously engage with Big Data discourses and practices, these analyses often focus on social media and other forms of online data typically generated about users. This introduction discusses how environmental Big Data is emerging as a parallel area of investigation within studies of Big Data. New practices, technologies, actors and issues are concretising that are distinct and specific to the operations of environmental data. Situating these developments in relation (...)
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  • Broken data: Conceptualising data in an emerging world.Melisa Duque, Robert Willim, Minna Ruckenstein & Sarah Pink - 2018 - Big Data and Society 5 (1).
    In this article, we introduce and demonstrate the concept-metaphor of broken data. In doing so, we advance critical discussions of digital data by accounting for how data might be in processes of decay, making, repair, re-making and growth, which are inextricable from the ongoing forms of creativity that stem from everyday contingencies and improvisatory human activity. We build and demonstrate our argument through three examples drawn from mundane everyday activity: the incompleteness, inaccuracy and dispersed nature of personal self-tracking data; the (...)
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  • Conceptualizations of Big Data and their epistemological claims in healthcare: A discourse analysis.Antoinette de Bont, Rik Wehrens & Marthe Stevens - 2018 - Big Data and Society 5 (2).
    In recent years, the healthcare field welcomed an emerging field of practices captured under the umbrella term ‘Big Data’. This term is surrounded with positive rhetoric and promises about the ability to analyse real-world data quickly and comprehensively. Such rhetoric is highly consequential in shaping debates on Big Data. While the fields of Science and Technology Studies and Critical Data Studies have been instrumental in elaborating the neglected and problematic dimensions of Big Data, it remains an open question how and (...)
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  • Disambiguating the benefits and risks from public health data in the digital economy.Sarah Cheung - 2020 - Big Data and Society 7 (1).
    This article focuses on key roles that the ill-defined concept of ‘public benefit’ plays in accessing the public health data held by the UK’s National Health Service. Using the concept of the ‘trade-off fallacy’, this article argues that current data access and governance structures, based on particular construals of public benefit in the context of public health data, largely negate the possibility of effective control by individuals over future uses of personal health data. This generates a health data version of (...)
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  • Big Data, epistemology and causality: Knowledge in and knowledge out in EXPOsOMICS.Stefano Canali - 2016 - Big Data and Society 3 (2).
    Recently, it has been argued that the use of Big Data transforms the sciences, making data-driven research possible and studying causality redundant. In this paper, I focus on the claim on causal knowledge by examining the Big Data project EXPOsOMICS, whose research is funded by the European Commission and considered capable of improving our understanding of the relation between exposure and disease. While EXPOsOMICS may seem the perfect exemplification of the data-driven view, I show how causal knowledge is necessary for (...)
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  • Heritage transformations.Chiara Bonacchi - 2021 - Big Data and Society 8 (2).
    This special theme examines the dynamic relationships between production, availability, and usage of Big Data, laying out a research agenda for digital heritage at the time of the ‘data turn’. Over the past 15 years, a proliferation of heritage data has been generated by ‘ecosystems of distributed practices’ enacted by the co-working of bodies, cultural identities, organisational workflows, software, application programming interfaces, etc. The authors of research articles and commentaries in this collection explore the three macro-dimensions along which we can (...)
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  • How should we do the history of Big Data?David Beer - 2016 - Big Data and Society 3 (1).
    Taking its lead from Ian Hacking’s article ‘How should we do the history of statistics?’, this article reflects on how we might develop a sociologically informed history of Big Data. It argues that within the history of social statistics we have a relatively well developed history of the material phenomenon of Big Data. Yet this article argues that we now need to take the concept of ‘Big Data’ seriously, there is a pressing need to explore the type of work that (...)
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  • Publishing Big Data research in Business Ethics, the Environment and Responsibility: Advice for authors.Ralf Barkemeyer, Georges Samara, Stefan Markovic & Dima Jamali - 2022 - Business Ethics, the Environment and Responsibility 32 (1):1-3.
    Business Ethics, the Environment &Responsibility, Volume 32, Issue 1, Page 1-3, January 2023.
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  • We Have Big Data, But Do We Need Big Theory? Review-Based Remarks on an Emerging Problem in the Social Sciences.Hermann Astleitner - 2024 - Philosophy of the Social Sciences 54 (1):69-92.
    Big data represents a significant challenge for the social sciences. From a philosophy-of-science perspective, it is important to reflect on related theories and processes for developing them. In this paper, we start by examining different views on the role of theories in big data-related social research. Then, we try to show how big data is related to standards for evaluating theories. We also outline how big data affects theory- and data-based research approaches and the process of theory building. Discussions include (...)
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  • Stream your brain! Speculative economy of the IoT and its pan-kinetic dataveillance.Sungyong Ahn - 2021 - Big Data and Society 8 (2).
    It is now a common belief that the truths of our lives are hidden in the databases streamed from our interactions in smart environments. In this current hype of big data, the Internet of Things has been suggested as the idea to embed small sensors and actuators everywhere to unfold the truths beneath the surfaces of everything. However, remaining the technology that promises more than it can provide thus far, more important for the IoT’s actual expansion to various social domains (...)
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  • Radiocarbon Dating in Archaeology: Triangulation and Traceability.Alison Wylie - 2020 - In Sabina Leonelli & Niccolò Tempini (eds.), Data Journeys in the Sciences. Springer. pp. 285-301.
    When radiocarbon dating techniques were applied to archaeological material in the 1950s they were hailed as a revolution. At last archaeologists could construct absolute chronologies anchored in temporal data backed by immutable laws of physics. This would make it possible to mobilize archaeological data across regions and time-periods on a global scale, rendering obsolete the local and relative chronologies on which archaeologists had long relied. As profound as the impact of 14C dating has been, it has had a long and (...)
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