Maja Bak Herrie 
Thinking Through Data [EPUB ebook] 
How Outliers, Aggregates, and Patterns Shape Perception

Soporte

We encounter digital data processing on a range of platforms and in a multitude of contexts today: in the predictive algorithms of the financial sector, in drones, insurance, and risk management, in smart cities, biometrics, medicine, and more. This fascinating book explores the historical context of the current data-driven paradigm and explains how elusive yet crucial statistical concepts such as outliers, aggregates, and patterns form how we sense and make sense of data. From the sixteenth century’s embodied measurements of the foot, through the blurred facial features of L’Homme Moyen, to the image aggregates of today’s security systems, the examples collected in this book illustrate the central role of aesthetics throughout the history of statistical knowledge production. Taking its point of departure in analyses and discussions of contemporary artistic experiments by Rossella Biscotti, Stéphanie Solinas, and Adam Broomberg and Oliver Chanarin, the book broadens our understanding of the structures of knowledge and methods in statistical computation beyond optimistic narratives of calculative power. Venturing out into the tails of the distributions—to the systemically overlooked and excluded—this book challenges us to embrace an alternative view of modern data processing.

€24.99
Métodos de pago

Tabla de materias

Acknowledgments
Introduction: Thinking Through Data
1. Outliers
2. Aggregates
3. Patterns
Conclusion: A Data-Saturated World
Notes
Index

Sobre el autor

Maja Bak Herrie, postdoc at The School of Communication and Culture at Aarhus University, works within the fields of aesthetics, media theory, and the philosophy of science on topics such as computational technologies of vision, scientific imaging, photography, and artistic research. She is co-editor
The Nordic Journal of Aesthetics.

¡Compre este libro electrónico y obtenga 1 más GRATIS!
Idioma Inglés ● Formato EPUB ● Páginas 166 ● ISBN 9781503642102 ● Tamaño de archivo 10.7 MB ● Editorial Stanford University Press ● Publicado 2025 ● Edición 1 ● Descargable 24 meses ● Divisa EUR ● ID 10104145 ● Protección de copia Adobe DRM
Requiere lector de ebook con capacidad DRM

Más ebooks del mismo autor / Editor

24.915 Ebooks en esta categoría