Affiliation:
1. NOVA-LINCS, SST, Universidade NOVA de Lisboa, Portugal
2. EST, Polytechnic Institute of Setúbal, Portugal
Abstract
As the volume and complexity of data streams continue to increase, exploratory cluster analysis is becoming increasingly important. In this chapter, the authors explore the use of artificial neural networks (ANNs), particularly self-organizing maps (SOMs), for this purpose. They propose additional methodologies, including concept drift detection, as well as distributed and collaborative learning strategies and introduce a new open-source Java ANN library, designed to support practical applications of SOMs across various domains. By following our tutorial, users will gain practical insights into visualizing and analyzing these challenging datasets, enabling them to harness the full potential of our approach in their own projects. Overall, this chapter aims to provide readers with a comprehensive understanding of SOMs and their place within the broader context of artificial neural networks. Furthermore, we offer practical guidance on the effective development and utilization of these models in real-world applications.
Reference26 articles.
1. AeberhardS.ForinaM. (1991). Wine. UCI Machine Learning Repository.
2. BaçãoF.LoboV.PainhoM. (2005). Self-organizing maps as substitutes for k-means clustering. Computational Science—ICCS 2005. Springer.
3. Data Streams for Unsupervised Analysis of Company Data
4. Clustering and visualization of bankruptcy trajectory using self-organizing map
5. Modeling wine preferences by data mining from physicochemical properties