What are neural networks not good at? On artificial creativity

Big Data and Society 6 (1) (2019)
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Abstract

This article discusses three dimensions of creativity: metaphorical thinking; social interaction; and going beyond extrapolation in predictions. An overview of applications of neural networks in these three areas is offered. It is argued that the current reliance on the apparatus of statistical regression limits the scope of possibilities for neural networks in general, and in moving towards artificial creativity in particular. Artificial creativity may require revising some foundational principles on which neural networks are currently built.

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Metaphors we live by.George Lakoff & Mark Johnson - 1980 - Chicago: University of Chicago Press. Edited by Mark Johnson.
Metaphors We Live By.George Lakoff & Mark Johnson - 1980 - Ethics 93 (3):619-621.
Wittgenstein on rules and private language.Saul Kripke - 1982 - Revue Philosophique de la France Et de l'Etranger 173 (4):496-499.
The sociology of philosophies: a global theory of intellectual change.Randall Collins - 1998 - Cambridge: Belknap Press of Harvard University Press.
The government of self and others.Michel Foucault - 2010 - New York: St Martin's Press. Edited by Michel Foucault.

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