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[2D5-GS-2-01] A Study on Developmental Artificial Neural Networks by Integrating Lower-order Functions
Keywords:Developmental Artificial Neural Networks, Neural Networks, Evolutional Computation
In the conventional deep learning, the topology of the networks is determined by learning the network parameters. This leads to a lot of useless learning.
On the other hand, animals develop innate fundamental ability, called instinct, from their experiences in the environment, and acquire behavioral knowledge with higher-order functions.
Such intellectual development can be captured as "development" rather than "learning".
In this study, we adopt Weight Agnostic Neural Networks (WANN), a model that captures the topology of networks through their development, as a fundamental technology. We aim at constructing Developmental Artificial Neural Networks (DANNs) that acquire hierarchical relationships of functions, in which higher-order functions expressed from pre-existing lower-order ones.
We took up a higher order human behavior, jump forward, and tried to acquire the behavior from two pre-existing lower-order behaviors, walk and jump, applying WANN framework to developing the network including the neural networks of those two behaviors. As a result, we understood that it is necessary to more elaborate our ideas for DANN.
On the other hand, animals develop innate fundamental ability, called instinct, from their experiences in the environment, and acquire behavioral knowledge with higher-order functions.
Such intellectual development can be captured as "development" rather than "learning".
In this study, we adopt Weight Agnostic Neural Networks (WANN), a model that captures the topology of networks through their development, as a fundamental technology. We aim at constructing Developmental Artificial Neural Networks (DANNs) that acquire hierarchical relationships of functions, in which higher-order functions expressed from pre-existing lower-order ones.
We took up a higher order human behavior, jump forward, and tried to acquire the behavior from two pre-existing lower-order behaviors, walk and jump, applying WANN framework to developing the network including the neural networks of those two behaviors. As a result, we understood that it is necessary to more elaborate our ideas for DANN.
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