Chapter of Book
Prototype-based mining of numeric data streams
Author/s | Ferrer Troyano, Francisco Javier
Aguilar Ruiz, Jesús Salvador Riquelme Santos, José Cristóbal |
Publication Date | 2003 |
Deposit Date | 2016-03-30 |
Published in |
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Abstract | Great organizations collect open-ended and time-changing data received at a high speed. The possibility of extracting useful knowledge from these potentially infinite databases is a new challenge in Data Mining. In this ... Great organizations collect open-ended and time-changing data received at a high speed. The possibility of extracting useful knowledge from these potentially infinite databases is a new challenge in Data Mining. In this paper we propose an anytime incremental learning algorithm for mining numeric data streams. Within Supervised Learning, our approach is based on prototypes and hypercubic decision rules, concerning with the simplicity of the model provided and the time complexity as primary goals. Experimental results with synthetic databases of 100 gigabytes show a good performance from streams of data in continuous transformation. |
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Prototype based.pdf | 620.1Kb | [PDF] | View/ | |