In this paper we explore the expressive power of recurrent networks with local feedback connections for symbolic data streams, We rely on the analysis of the maximal set of strings that can be shattered by the concept class associated to these networks (i.e., strings that can be arbitrarily classified as positive or negative), and find that their expressive power is inherently limited, since there are sets of strings that cannot be shattered, regardless of the number of hidden units. Although the analysis holds for networks with hard threshold units, we claim that the incremental computational capabilities gained when using sigmoidal units are severely paid in terms of robustness of the corresponding representation.
Frasconi, P., Gori, M. (1996). Computational capabilities of local-feedback recurrent networks acting as finite-state machines. IEEE TRANSACTIONS ON NEURAL NETWORKS, 7(6), 1521-1525 [10.1109/72.548181].
Computational capabilities of local-feedback recurrent networks acting as finite-state machines
Gori M.
1996-01-01
Abstract
In this paper we explore the expressive power of recurrent networks with local feedback connections for symbolic data streams, We rely on the analysis of the maximal set of strings that can be shattered by the concept class associated to these networks (i.e., strings that can be arbitrarily classified as positive or negative), and find that their expressive power is inherently limited, since there are sets of strings that cannot be shattered, regardless of the number of hidden units. Although the analysis holds for networks with hard threshold units, we claim that the incremental computational capabilities gained when using sigmoidal units are severely paid in terms of robustness of the corresponding representation.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.
https://hdl.handle.net/11365/35926
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