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What is Adaptive Resonance Theory

Handbook of Research on Machine Learning Applications and Trends: Algorithms, Methods, and Techniques
Adaptive resonance theory is a learning theory hypothesizing that resonance in neural circuits can trigger fast learning. It was developed as a solution to the stability-plasticity dilemma and can learn arbitrary input patterns in a stable, fast, and self-organizing way.
Published in Chapter:
Exploring the Unknown Nature of Data: Cluster Analysis and Applications
Rui Xu (Missouri University of Science and Technology, USA) and Donald C. Wunsch II (Missouri University of Science and Technology, USA)
DOI: 10.4018/978-1-60566-766-9.ch001
Abstract
To classify objects based on their features and characteristics is one of the most important and primitive activities of human beings. The task becomes even more challenging when there is no ground truth available. Cluster analysis allows new opportunities in exploring the unknown nature of data through its aim to separate a finite data set, with little or no prior information, into a finite and discrete set of “natural,” hidden data structures. Here, the authors introduce and discuss clustering algorithms that are related to machine learning and computational intelligence, particularly those based on neural networks. Neural networks are well known for their good learning capabilities, adaptation, ease of implementation, parallelization, speed, and flexibility, and they have demonstrated many successful applications in cluster analysis. The applications of cluster analysis in real world problems are also illustrated. Portions of the chapter are taken from Xu and Wunsch (2008).
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Neural Networks for Intrusion Detection
This is a kind of neural network. The basic ART system is an unsupervised learning model and typically consists of comparison and recognition fields (one each) of neurons, a vigilance parameter, and a reset module. There have been several types. ART2 supports continuous inputs.
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