Alquezar R, Sanfeliu A. (1995). An algebraic framework to represent finite state machines in single-layer recurrent neural networks Neural Comput. 7
Baldi P, Brunak S, Frasconi P, Soda G, Pollastri G. (1999). Exploiting the past and the future in protein secondary structure prediction. Bioinformatics (Oxford, England). 15 [PubMed]
Baldi P, Frasconi P, Pollastri G, Vullo A. (2002). Prediction of protein topologies using GIOHMMs and GRNNs Advances in neural information processing systems. 14
Bengio Y, Frasconi P. (1996). Input-output HMMs for sequence processing. IEEE transactions on neural networks. 7 [PubMed]
Bengio Y, Simard P, Frasconi P. (1994). Learning long-term dependencies with gradient descent is difficult. IEEE transactions on neural networks. 5 [PubMed]
Bianucci AM, Micheli A, Sperduti A, Starita A. (2000). Application of cascade correlation networks for structures to chemistry J Appl Intell. 12
Chen D et al. (1995). Constructive learning of recurrent neural networks: Limitations of recurrent cascade correlation and a simple solution IEEE Trans Neural Networks. 6
Chung Tsoi A, Scarselli F. (1998). Universal Approximation Using Feedforward Neural Networks: A Survey of Some Existing Methods, and Some New Results. Neural networks : the official journal of the International Neural Network Society. 11 [PubMed]
Cristianini N, Shawe-Taylor J, Watkins CJCH, Lodhi H. (2000). Text classification using string kernels Advances in nueural information processing systems.
Fahlmann SE. (1991). The recurrent cascade-correlation architecture Advances in neural information processing systems. 3
Forcada ML, Carrasco RC. (1995). Learning the initial state of a second-order recurrent neural network during regular-language inference Neural Comput. 7
Frasconi P. (2002). Comparing convolution kernels and RNNs on a wide-coverage computational analysis of natural language NIPS 2002 Workshop.
Frasconi P, Gori M. (1996). Computational capabilities of local-feedback recurrent networks acting as finite-state machines. IEEE transactions on neural networks. 7 [PubMed]
Frasconi P, Gori M, Diligenti M. (2003). Hidden tree Markov models for document image classification IEEE Trans Pattern Anal Mach Intell. 25
Frasconi P, Gori M, Sperduti A. (1998). A general framework for adaptive processing of data structures. IEEE transactions on neural networks. 9 [PubMed]
Frasconi P, Vullo A. (2003). A recursive connectionist approach for predicting disulfide connectivity in proteins Proceedings of the Eighteenth Annual ACM Symposium on Applied Computing (SAC 2003).
Goller C. (1997). A connectionist approach for learning search control heuristics for automated deduction systems Unpublished doctoral dissertation.
Goller C, Kuchler A. (1996). Learning task-dependent distributed structure-representations by backpropagation through structure IEEE International Conference on Neural Networks.
Gori M, Maggini M, de_Mauro C, Diligenti M. (2003). Similarity learning for graph-based image representations Pattern Recognition Letters. 24
Hammer B. (2000). Learning with recurrent neural networks.
Hammer B. (2001). Generalization ability of folding networks IEEE Trans Know Data Eng. 13
Hammer B, Steil JJ. (2002). Perspectives on learning with recurrent neural networks ESANN02.
Haussler D. (1999). Convolution kernels on discrete structures Tech. Rep. No. UCSC-CRL-99-10.
Hornik K, White H, Stinchcombe M. (1989). Multilayer feedforward networks are universal approximators Neural Networks. 2
Jaakkola T, Diekhans M, Haussler D. (2000). A discriminative framework for detecting remote protein homologies. Journal of computational biology : a journal of computational molecular cell biology. 7 [PubMed]
Kremer SC. (2001). Spatiotemporal connectionist networks: A taxonomy and review Neural Comput. 13
Lebiere C, Fahlmann SE. (1990). The cascade-correlation learning architecture Advances in neural information processing systems. 2
Leslie C, Eskin E, Noble WS. (2002). The spectrum kernel: a string kernel for SVM protein classification. Pacific Symposium on Biocomputing. Pacific Symposium on Biocomputing. [PubMed]
Micheli A. (2003). Recursive processing of structured domains in machine learning Unpublished doctoral dissertation.
Micheli A, Sona D, Sperduti A. (2004). Contextual processing of structured data by recursive cascade correlation. IEEE transactions on neural networks. 15 [PubMed]
Micheli A, Sperduti A, Sona D. (2000). Bi-causal recurrent cascade correlation Proceedings Of The International Joint Conference On Neural Networks. 3
Micheli A, Sperduti A, Sona D. (2002). Recursive cascade correlation for contextual processing of structured data Proceedings Of The International Joint Conference On Neural Networ. 1
Micheli A, Sperduti A, Sona D. (2003). Formal definition of context in contextual recursive cascade correlation networks Proceedings of ICANN-ICONIP 2003. 2714
Nakamura Y, Funahashi K. (1993). Approximation of dynamical systems by continuous time recurrent neural networks Neural Netw. 6
Sontag ED. (1992). Feedforward nets for interpolation and classification J Computer System Sci. 45
Sperduti A. (1997). On the computational power of neural networks for structures Neural Netw. 10
Sperduti A, Starita A. (1997). Supervised neural networks for the classification of structures IEEE Trans Neural Networks. 8
Sperduti A, Starita A, Majidi D. (1996). Extended cascade-correlation for syntactic and structural pattern recognition Advances in structured and syntactical pattern recognition.
Sturt P, Costa F, Lombardo V, Frasconi P. (2003). Learning first-pass structural attachment preferences with dynamic grammars and recursive neural networks. Cognition. 88 [PubMed]
Sun R. (2001). Introduction to sequence learning Sequence learning: Paradigms, algorithms, and applications.
Wakuya H, Zurada JM. (2001). Bi-directional computing architecture for time series prediction. Neural networks : the official journal of the International Neural Network Society. 14 [PubMed]
Watkins C. (1999). Dynamic alignment kernels Advances in large main classifiers.