Neural Networks

2023
Authors:

Ranjodh Singh Dhaliwal, Théo Lepage-Richer, and Lucy Suchman

A critical examination of the figure of the neural network as it mediates neuroscientific and computational discourses and technical practices

Far from signaling the ultimate convergence of human and machine intelligence, neural networks highlight the technologization of neurophysiology that characterizes virtually all strands of neuroscientific and AI research of the past century. Taking this traffic as its starting point, Neural Networks explores how cognition came to be constructed as essentially computational in nature and how countermovements provide resources for thinking otherwise.

Neural Networks proposes to reconstruct situated practices, social histories, mediating techniques, and ontological assumptions that inform the computational project of the same name. If so-called machine learning comprises a statistical approach to pattern extraction, then neural networks can be defined as a biologically inspired model that relies on probabilistically weighted neuron-like units to identify such patterns. Far from signaling the ultimate convergence of human and machine intelligence, however, neural networks highlight the technologization of neurophysiology that characterizes virtually all strands of neuroscientific and AI research of the past century. Taking this traffic as its starting point, this volume explores how cognition came to be constructed as essentially computational in nature, to the point of underwriting a technologized view of human biology, psychology, and sociability, and how countermovements provide resources for thinking otherwise.

Ranjodh Singh Dhaliwal is Ruth and Paul Idzik Collegiate Chair in Digital Scholarship and assistant professor of English and film, television, and theater at the University of Notre Dame. His research—which spans media theory, science and technology studies, and literary criticism—has appeared in Critical Inquiry, Configurations, and Design Issues.

Théo Lepage-Richer is a UTM postdoctoral fellow in the Institute of Communication, Culture, Information, and Technology at the University of Toronto. His last piece on government organization and artificial intelligence was published in Big Data & Society.

Lucy Suchman is professor emerita in the anthropology of science and technology at Lancaster University, UK. Her most recent article on military imaginaries of AI-enabled warfighting was published in the journal Social Studies of Science.

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