Posthumanist Learning: What Robots and Cyborgs Teach us About Being Ultra-social

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In this text Hasse presents a new, inclusive, posthuman learning theory, designed to keep up with the transformations of human learning resulting from new technological experiences, as well as considering the expanding role of cyborg devices and robots in learning. This ground-breaking book draws on research from across psychology, education, and anthropology to present a truly interdisciplinary examination of the relationship between technology, learning and humanity.

Posthumanism questions the self-evident status of human beings by exploring how technology is changing what can be categorised as "human". In this book, the author applies a posthumanist lens to traditional learning theory, challenging conventional understanding of what a human learner is, and considering how technological advances are changing how we think about this question. Throughout the book Hasse uses vignettes of her own research and that of other prominent academics to exemplify what technology can tell us about how we learn and how this can be observed in real-life settings.

Posthumanist Learning is essential reading for students and researchers of posthumanism and learning theory from a variety of backgrounds, including psychology, education, anthropology, robotics and philosophy.

Author(s): Cathrine Hasse
Edition: 1
Publisher: Routledge
Year: 2020

Language: English
Pages: 360

Cover
Half Title
Title Page
Copyright Page
Table of Contents
Foreword
Chapter 1 Introduction
Posthuman or posthumanist?
Of which human are we post?
Learning to be “little masters”
Ultra-social learning
Splitting machine and human
Robots as teachers
Conclusion: Chapter 1
Notes
References
Chapter 2 Posthumanist learning in education
A brief history of learning
The cultural paradigm
Learning in education
Classifications of learning
Educational culture
Towards a posthumanist education?
Education for all?
Posthuman predicaments
Conclusion: Chapter 2
Notes
References
Chapter 3 Emotional collectives
The disappearing scientist
The Mars mission
Schema theory revisited
The theory of cultural models
Experiments at CERN
Organised emotions
Conclusion: Chapter 3
Notes
References
Chapter 4 Robots in a storied world
Making the human in robots
Revisiting Andreas
Robots or humans as machines
Real robots
Robot classifications
The Telenoid
Stretch towards machines
Conclusion: Chapter 4
Notes
References
Chapter 5 The materiality of words
Social nudging
Concepts are not representations
Collective “spacetimematter”
Real robots revisited
Changing a material world
Meaningful words
Concepts in process
Conclusion Chapter 5
Notes
References
Chapter 6 Socio-material concept formation
Material entanglements
Windows to concepts
Fantasies in drawings
Word meaning and scientific concepts
ISO-standard robots
Hands-on experiences
Teaching in learning
Conclusion: Chapter 6
Notes
References
Chapter 7 Ignorance in the collective of collectives
The mystery of the square heads
Collectively organised knowledge
Practices of knowing
Ultra-sociality
Cultural conceptions of gender
Auxiliary apparatus
Relativism and ignorance
Conclusion: Chapter 7
Notes
References
Chapter 8 Learning with cyborg technology
Cyborgs in space
The sense-storied body
Embodiment relation
Aun Aprendo
Scout learning and body-schemas
Conclusion: Chapter 8
Notes
References
Chapter 9 Extended mindful bodies
The white bears
Common language
Ignorance of ignorance
The mindful body
Challenging the mindful body
Anchors of meaning
Conceptual inequality
Conclusion: Chapter 9
Notes
References
Chapter 10 Ignorance by proxy
The learning machines
Machine conversations
Surprises in machine learning
The normativity of learning
The third surprise: emphasis on “learning”
Learning differences between humans and machines
The cultural turn
Conclusion: Chapter 10
Notes
References
Index