Home
Publishing
DrugRxiv
Drug Repurposing
Network Medicine
About
REPO4EU
Meet the team
Drug Repurposing Research Collection
Conference
Blog
My ScienceOpen
Sign in
Register
Dashboard
Search
Home
Publishing
DrugRxiv
Drug Repurposing
Network Medicine
About
REPO4EU
Meet the team
Drug Repurposing Research Collection
Conference
My ScienceOpen
Sign in
Register
Dashboard
Search
10
views
0
references
Top references
cited by
11
Cite as...
0 reviews
Review
0
comments
Comment
0
recommends
+1
Recommend
0
collections
Add to
0
shares
Share
Twitter
Sina Weibo
Facebook
Email
2,182
similar
All similar
Record
: found
Abstract
: not found
Book
: not found
The Myth of Artificial Intelligence : Why Computers Can’t Think the Way We Do
monograph
Author(s):
ERIK J. LARSON
Publication date:
April 06 2021
Publisher:
Harvard University Press
Read this book at
Publisher
Buy book
Review
Review book
Invite someone to review
Bookmark
Cite as...
There is no author summary for this book yet. Authors can add summaries to their books on ScienceOpen to make them more accessible to a non-specialist audience.
Related collections
Artificial Intelligence in Medicine
Author and book information
Book
ISBN (Electronic):
9780674259935
ISBN (Print):
9780674983519
Publication date:
April 06 2021
DOI:
10.2307/j.ctv322v43j
SO-VID:
59f94517-e128-4921-bc2a-553bc1d7ece1
History
Related
Co-Access
Data availability:
Comments
Comment on this book
Sign in to comment
Book chapters
pp. i
Front Matter
pp. i
Frontmatter
pp. vii
Table of Contents
pp. vii
CONTENTS
pp. 1
INTRODUCTION
pp. 1
Introduction
pp. 9
THE INTELLIGENCE ERROR
pp. 19
TURING AT BLETCHLEY
pp. 33
THE SUPERINTELLIGENCE ERROR
pp. 44
THE SINGULARITY, THEN AND NOW
pp. 50
NATURAL LANGUAGE UNDERSTANDING
pp. 60
AI AS TECHNOLOGICAL KITSCH
pp. 68
SIMPLIFICATIONS AND MYSTERIES
pp. 89
DON’T CALCULATE, ANALYZE
pp. 9
1 The Intelligence Error
pp. 95
THE PUZZLE OF PEIRCE (AND PEIRCE’S PUZZLE)
pp. 106
PROBLEMS WITH DEDUCTION AND INDUCTION
pp. 133
MACHINE LEARNING AND BIG DATA
pp. 157
ABDUCTIVE INFERENCE
pp. 191
INFERENCE AND LANGUAGE I
pp. 204
INFERENCE AND LANGUAGE II
pp. 237
MYTHS AND HEROES
pp. 245
AI MYTHOLOGY INVADES NEUROSCIENCE
pp. 263
NEOCORTICAL THEORIES OF HUMAN INTELLIGENCE
pp. 269
THE END OF SCIENCE?
pp. 19
2 Turing at Bletchley
pp. 33
3 The Superintelligence Error
pp. 44
4 The Singularity, Then and Now
pp. 50
5 Natural Language Understanding
pp. 60
6 AI as Technological Kitsch
pp. 68
7 Simplifications and Mysteries
pp. 89
8 Don’t Calculate, Analyze
pp. 95
9 The Puzzle of Peirce (and Peirce’s Puzzle)
pp. 106
10 Problems with Deduction and Induction
pp. 133
11 Machine Learning and Big Data
pp. 157
12 Abductive Inference
pp. 191
13 Inference and Language I
pp. 204
14 Inference and Language II
pp. 237
15 Myths and Heroes
pp. 245
16 AI Mythology Invades Neuroscience
pp. 263
17 Neocortical Theories of Human Intelligence
pp. 269
18 The End of Science?
pp. 283
Notes
pp. 283
NOTES
pp. 301
ACKNOWLEDGMENTS
pp. 301
Acknowledgments
pp. 303
INDEX
pp. 303
Index
Similar content
2,182
Even six-legged diners can’t resist sweet-and-salty snacks
Authors:
Why Government Spending Can’t Turn the U.S. Into Venezuela
Authors:
F. Kaboub
’Beggars can’t be Choosers’: the european crisis and chinese direct investment in the european union
Authors:
S. MEUNIER
See all similar
Cited by
11
Artificial intelligence and the public arena
Authors:
Andreas Jungherr
,
Ralph Schroeder
COVID-19 pandemic and artificial intelligence: challenges of ethical bias and trustworthy reliable reproducibility?
Authors:
Casimir Kulikowski
,
Victor Maojo
Humans and Intelligent Machines: Underlying Values
Authors:
Paula Boddington
See all cited by