Title of article
Complexity and non-commutativity of learning operations on graphs
Author/Authors
Harald Atmanspacher، نويسنده , , Thomas Filk and Via Mellini 26–28 57031 Capoliveri، نويسنده , , Italy Parmenides Foundation، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
10
From page
84
To page
93
Abstract
We present results from numerical studies of supervised learning operations in small recurrent networks considered as graphs, leading from a given set of input conditions to predetermined outputs. Graphs that have optimized their output for particular inputs with respect to predetermined outputs are asymptotically stable and can be characterized by attractors, which form a representation space for an associative multiplicative structure of input operations. As the mapping from a series of inputs onto a series of such attractors generally depends on the sequence of inputs, this structure is generally non-commutative. Moreover, the size of the set of attractors, indicating the complexity of learning, is found to behave non-monotonically as learning proceeds. A tentative relation between this complexity and the notion of pragmatic information is indicated.
Keywords
graph theory , Complexity , Non-commutativity , Recurrent networks , Supervised learning , Pragmatic information
Journal title
BioSystems
Serial Year
2006
Journal title
BioSystems
Record number
497730
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