Pölzlbauer, G., Lidy, T., & Rauber, A. (2008). Decision Manifolds - A Supervised Learning Algorithm Based on Self-Organization. IEEE Transactions on Neural Networks and Learning Systems, 19(9), 1518–1530. https://doi.org/10.1109/tnn.2008.2000449
IEEE Transactions on Neural Networks and Learning Systems
-
ISSN:
2162-237X
-
Date (published):
15-Jul-2008
-
Number of Pages:
13
-
Publisher:
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
-
Peer reviewed:
Yes
-
Keywords:
Computer Science Applications; Software; Artificial Intelligence; General Medicine; supervised learning; Computer Networks and Communications; Decision surface estimation; self-organizing maps (SOMs)
-
Abstract:
In this paper, we present a neural classifier algorithm
that locally approximates the decision surface of labeled data by a
patchwork of separating hyperplanes, which are arranged under
certain topological constraints similar to those of self-organizing
maps (SOMs).We take advantage of the fact that these boundaries
can often be represented by linear ones connected by a low-dimensional
nonlinear manifold, thus influencing the placement of
the separators. The resulting classifier allows for a voting scheme
that averages over the classification results of neighboring hyperplanes.
Our algorithm is computationally efficient both in terms
of training and classification. Further, we present a model selection
method to estimate the topology of the classification boundary.
We demonstrate the algorithm's usefulness on several artificial and
real-world data sets and compare it to the state-of-the-art supervised
learning algorithms.
en
Research Areas:
Visual Computing and Human-Centered Technology: 70% Logic and Computation: 30%