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Digging deeper on “deep” learning: A computational ecology approach

Published online by Cambridge University Press:  10 November 2017

Massimo Buscema
Affiliation:
Semeion Research Center, 00128 Rome, Italy. [email protected]. www.semeion.itwww.researchgate.net/profile/Massimo_Buscema University of Colorado at Denver, Denver, CO 80217
Pier Luigi Sacco
Affiliation:
IULM University of Milan, 20143 Milan, Italy. [email protected]/profile/Pier_Sacco Harvard University Department of Romance Languages and Literatures, Cambridge, MA 02138. [email protected][email protected]

Abstract

We propose an alternative approach to “deep” learning that is based on computational ecologies of structurally diverse artificial neural networks, and on dynamic associative memory responses to stimuli. Rather than focusing on massive computation of many different examples of a single situation, we opt for model-based learning and adaptive flexibility. Cross-fertilization of learning processes across multiple domains is the fundamental feature of human intelligence that must inform “new” artificial intelligence.

Type
Open Peer Commentary
Copyright
Copyright © Cambridge University Press 2017 

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