Recursive neural networks are a powerful tool for processing structured data. According to the recursive learning paradigm, the information to be processed consists of directed positional acyclic graphs (DPAGs). In fact, recursive networks are fed following the partial order defined by the links of the graph. Unfortunately, the hypothesis of processing DPAGs is sometimes too restrictive, being the nature of some real-world problems intrinsically disordered and cyclic. In the paper, a methodology is proposed which allows us to map any cyclic directed graph into a "recursive-equivalent" tree. Therefore, the computational power of recursive networks is definitely established, also clarifying the underlying limitations of the model.

Bianchini, M., Gori, M., Scarselli, F. (2002). Recursive Processing of Cyclic Graphs. In Proceeding of the 2002 IEEE International Joint Conference on Neural Networks (pp.154-159). IEEE [10.1109/IJCNN.2002.1005461].

Recursive Processing of Cyclic Graphs

Bianchini M.;Gori M.;Scarselli F.
2002-01-01

Abstract

Recursive neural networks are a powerful tool for processing structured data. According to the recursive learning paradigm, the information to be processed consists of directed positional acyclic graphs (DPAGs). In fact, recursive networks are fed following the partial order defined by the links of the graph. Unfortunately, the hypothesis of processing DPAGs is sometimes too restrictive, being the nature of some real-world problems intrinsically disordered and cyclic. In the paper, a methodology is proposed which allows us to map any cyclic directed graph into a "recursive-equivalent" tree. Therefore, the computational power of recursive networks is definitely established, also clarifying the underlying limitations of the model.
2002
9780780372788
Bianchini, M., Gori, M., Scarselli, F. (2002). Recursive Processing of Cyclic Graphs. In Proceeding of the 2002 IEEE International Joint Conference on Neural Networks (pp.154-159). IEEE [10.1109/IJCNN.2002.1005461].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11365/18926
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