Parallel, Distributed, and Grid-Based Data Mining

Author:

HajHmida Moez Ben1,Congiusta Antonio2

Affiliation:

1. Moez Ben HajHmidaFaculty of Sciences of Tunis, Tunisia

2. University of Calabria, Italy & University of Salerno, Italy

Abstract

Knowledge discovery has become a necessary task in scientific, life sciences, and business fields, both for the growing amount of data being collected and for the complexity of the analysis that need to be performed on it. Classic data mining techniques, developed for centralized sites, often reveal themselves inadequate, due to some unique characteristics of today’s data sources. In such cases, sequential approaches to data mining cannot provide for scalability, in terms of the data dimensionality, size, and runtime performance. Moreover, the increasing trend towards decentralized business organizations, distribution of users, software, and hardware systems magnifies the need for more advanced and flexible approaches and solutions. Life science is one of the application areas that best resemble such scenario. This chapter presents the state of the art about the major data mining techniques, systems and approaches. A detailed taxonomy is drawn by analyzing and comparing parallel, distributed and Grid-based data mining methods, with a particular focus on the exploitation of large and remotely dispersed datasets and/or high-performance computers.

Publisher

IGI Global

Reference72 articles.

1. Abraham, A., Grosan, C., & Ramos, V. (Eds.). (2006). Swarm Intelligence in Data Mining, Studies in Computational Intelligence. Berlin, Germany: Springer-Verlag.

2. Abraham, A., & Nath, B. (2000). Hybrid heuristics for optimal design of artificial neural networks. In R. John & R. Birkenhead (Eds.), Advances in Soft Computing Techniques and Applications (pp. 15-22). Berlin, Germany: Springer-Verlag.

3. Grid implementation of the Apriori algorithm

4. Agrawal, R., Mannila, H., Srikant, R., Toivonen, H., & Verkamo, A. I. (1996). Fast discovery of association rules. In, U. Fayyad et al. (Eds.), Advances in Knowledge Discovery and Data Mining (pp. 307-328). Menlo Park, CA: AAAI Press.

5. Ali, A. S., & Taylor, I. J. (2005). Web services composition for distributed data mining. In The 2005 IEEE International Conference on Parallel Processing Workshops (pp. 11-18).

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