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Neurological Metaphor in Deep Learning: Issues and Alternatives

Browne, Kieran

Description

Representations of deep learning - discursive, historical and diagrammatic - are structured by a neurological metaphor that overstates a likeness to the brain and disguises other ways of understanding the technology. These neurological representations muddle the crucial public debate even as deep learning is applied in high-stakes applications, particularly in institutions of social and political power. This thesis draws on historical sources and contemporary literature to trace the development...[Show more]

dc.contributor.authorBrowne, Kieran
dc.date.accessioned2022-10-03T11:47:46Z
dc.date.available2022-10-03T11:47:46Z
dc.identifier.urihttp://hdl.handle.net/1885/274243
dc.description.abstractRepresentations of deep learning - discursive, historical and diagrammatic - are structured by a neurological metaphor that overstates a likeness to the brain and disguises other ways of understanding the technology. These neurological representations muddle the crucial public debate even as deep learning is applied in high-stakes applications, particularly in institutions of social and political power. This thesis draws on historical sources and contemporary literature to trace the development and contemporary expression of the neurological metaphor in deep learning discourse; particularly with respect to the field's terminology, the telling of its history, and the drawing of its diagrams. In the manuscript and in three documented practice-based works, I propose alternative metaphors for deep learning - divination, surveillance and memory - to highlight sociotechnical concerns posed by the technology. As a highly interdisciplinary project, this thesis applies a range of methods drawn variously from digital humanities, discourse analysis, human-centred computing, visual arts and design, and deep learning itself. The traditional scholarship and practice-based aspects of the thesis are situated in contemporary debates of AI bias and interpretability, and the role of deep learning in systems of power.
dc.language.isoen_AU
dc.titleNeurological Metaphor in Deep Learning: Issues and Alternatives
dc.typeThesis (PhD)
local.contributor.supervisorSwift, Benjamin
local.contributor.supervisorcontactu2548636@anu.edu.au
dc.date.issued2022
local.contributor.affiliationCollege of Engineering and Computer Science, The Australian National University
local.identifier.doi10.25911/3A83-C476
local.identifier.proquestYes
local.identifier.researcherIDGZM-9115-2022
local.thesisANUonly.author1c97ef9f-fa04-49d8-81cb-699264ee1319
local.thesisANUonly.title000000013917_TC_1
local.thesisANUonly.keyb71d5803-d148-bba0-20e9-986624ee901f
local.mintdoimint
CollectionsOpen Access Theses

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KBROWNE_thesis_corrections_final.pdfThesis Material21.36 MBAdobe PDFThumbnail


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