Please use this identifier to cite or link to this item: https://doi.org/10.48548/pubdata-1404
Resource typeDissertation
Title(s)Automated Patterns of Culture
Subtitle(s)Philosophy and Machine Learning
DOI10.48548/pubdata-1404
Handle20.500.14123/1473
CreatorPrado, Maria Belen  0000-0002-7908-3739 (Fakultät Kulturwissenschaften, Leuphana Universität Lüneburg  02w2y2t16)
RefereeHörl, Erich  0009-0006-3304-0895
Nigro, Roberto  1137348704
Kauppinen, Tomi  0000-0003-3479-7022
AdvisorHörl, Erich  0009-0006-3304-0895
AbstractThe book, entitled Automated Patterns of Culture: Machine learning and Culture [APOC], represents a unique contribution to the interdisciplinary exploration of patterns, offering an insightful engagement of the evolving process of pattern recognition in AI technologies with philosophical and media theories. The work not only expands on contemporary scholarship but also provides a provocative and profound dialogue with them. APOC navigates in a completely novel way the complexities of patterns with precision by underlying their evolution at different scales (as found in nature (ancestrality), mediated by humans and technics (history), and mediated and produced between technologies themselves (hyperhistory). It not only clarifies the historical development of pattern recognition techniques but also provides critical reflections that illuminate the current challenges and ethical as well as psycho-social considerations within the rapidly evolving landscape of artificial intelligence.
LanguageEnglish
KeywordsArtificial Intelligence; Machine Learning; Behavior Pattern; Homophily
Date of defense2023-12-05
Year of publication in PubData2024
Publishing typeFirst publication
Date issued2024-11-04
Creation contextResearch
Granting InstitutionLeuphana Universität Lüneburg
Published byMedien- und Informationszentrum, Leuphana Universität Lüneburg
Files in This Item:
File Description SizeFormat 

Prado_Automated_Patterns_of_Culture_Diss.pdf
MD5: a69973541f54e7398840e03e48a65d25
License:  Nutzung nach Urheberrecht
open-access


4.39 MB

Adobe PDF
View/Open

Items in PubData are protected by copyright, with all rights reserved, unless otherwise indicated.

Citation formats
Access statistics

Page view(s): 16

Download(s): 161