Title: New transfer functions for neural networks
- Objective: The choice of transfer functions may strongly influence complexity
and performance of neural networks. Provide systematic analysis and taxonomy of transfer functions, their advantages over standard solutions.
- Participants: Norbert Jankowski and
Wlodzislaw Duch
- Date: From 1993 - present
- Papers: main and related
Main papers on transfer functions:
- Duch W (2005)
Uncertainty of data, fuzzy membership functions, and multi-layer perceptrons.
IEEE Transactions on Neural Networks 16(1): 10-23.
Relations between fuzzy logic and neural transfer functions are analyzed and a few new transfer functions derived.
-
Duch W, Jankowski N,
Transfer functions: hidden possibilities for better neural networks.
9th European Symposium on Artificial Neural Networks (ESANN), Brugge 2001. De-facto publications, pp. 81-94
-
Duch W, Adamczak R, Diercksen GHF,
Constructive density estimation network based on several different separable transfer functions.
9th European Symposium on Artificial Neural Networks (ESANN), Brugge 2001. De-facto publications, pp. 107-112
-
Jankowski N, Duch W,
Optimal transfer function neural networks.
9th European Symposium on Artificial Neural Networks (ESANN), Brugge 2001. De-facto publications, pp. 101-106
-
Duch W, Adamczak R, Diercksen GHF,
Neural Networks from Similarity Based Perspective.
New Frontiers in Computational Intelligence and its Applications.
Ed. M. Mohammadian, IOS Press, Amsterdam 2000, pp. 93-108
-
Duch W, Jankowski N,
Taxonomy of neural transfer functions,
IEEE, International Joint Conference on Neural Networks 2000 (IJCNN), Vol. III, pp. 477-484
-
Duch W, Jankowski N (1999)
Survey of neural transfer functions,
Neural Computing Surveys 2: 163-213,
and a copy (PDF) here.
-
Duch W, Adamczak R, Diercksen GHF (1999)
Neural Networks in non-Euclidean spaces.
Neural Processing Letters 10: 201-210
-
Duch W, Adamczak R, Diercksen GHF (1999)
Distance-based multilayer perceptrons.
Computational Intelligence for Modelling Control and Automation. Neural Networks and Advanced Control Strategies. Ed. M. Mohammadian, IOS Press, Amsterdam, pp. 75-80
-
Duch W and Jankowski N (1996)
Bi-radial transfer functions.
Proceedings of the Second Conference on Neural
Networks and their applications, Orle Gniazdo, 30.IV-4.V.1996, pp. 131-137
Papers related to the transfer functions:
-
Duch W,
Towards comprehensive foundations of computational intelligence.
| PDF file.
In: W. Duch and J. Mandziuk,
Challenges for Computational Intelligence.
Springer Studies in Computational Intelligence, Vol. 63, 261-316, 2007.
- Kordos M, Duch W (2004),
A Survey of Factors Influencing MLP Error Surface.
Control and Cybernetics 33(4): 611-631.
Neural error functions are influence by the choice of transfer functions, but the primiary goal here is to visualize the training process.
- Duch W, Blachnik M,
Fuzzy rule-based systems derived from similarity to prototypes.
Lecture Notes in Computer Science, Vol. 3316 (2004) 912-917.
Introduces transformations between distance functions and fuzzy membership functions that are used as transfer functions in the basis expansion networks, such as RBF or separable functions networks.
- Duch W, Grabczewski K,
Heterogeneous adaptive systems
IEEE World Congress on Computational Intelligence, Honolulu, May 2002, pp. 524-529.
-
Duch W,
Similarity based methods: a general framework for classification, approximation and association,
Control and Cybernetics 29 (4) (2000) 937-968
-
Duch W, Adamczak R, Diercksen G.H.F,
Classification, Association and Pattern Completion using Neural Similarity Based Methods.
Applied Mathematics and Computer Science 10:4 (2000) 101-120
- N. Jankowski.
Ontogenic neural
networks and their applications to classification of medical data . PhD thesis,
Department of Computer Methods, Nicolaus Copernicus University, Torun, Poland, 1999.
- N. Jankowski. Approximation and classification in medicine with IncNet neural networks. In Machine Learning and Applications. Workshop on Machine Learning in Medical Applications, pages 53-58, Chania, Greece, July 1999.
- N. Jankowski. Flexible
transfer functions with ontogenic neural. Technical report, Computational Intelligence Lab, DCM NCU, Torun, Poland, 1999.
- N. Jankowski.
Approximation
with RBF-type neural networks using flexible local and semi-local transfer functions. In 4th
Conference on Neural Networks and Their Applications, pages 77-82, Zakopane, Poland, May 1999.
- Duch W, Grudzinski K and Diercksen G.H.F (1998)
Minimal distance neural methods.
World Congress of Computational Intelligence, May 1998, Anchorage, Alaska, IEEE IJCNN'98 Proceedings, pp. 1299-1304
- Duch W and Jankowski N (1997)
New
neural transfer functions.
Applied Mathematics and Computer Science 7 (1997) 639-658 (invited by the Editor)
- Duch W and Diercksen GHF (1995)
Feature Space Mapping as a universal adaptive system
Computer Physics Communications 87: 341-371
- Duch W (1994) Floating Gaussian Mapping: a new model of adaptive systems.
Neural Network World 4:645-654
- Duch W (1993) On the optimal processing functions for neural network elements, UMK-KMK-TR 6/93 report.
- Links to
many talks and to
other papers on various subjects.