Data di Pubblicazione:
2011
Abstract:
Producing good quality clustering of data streams in real time is a
difficult problem, since it is necessary to perform the analysis of data points
arriving in a continuous style, with the support of quite limited computational
resources. The incremental and evolving nature of the resulting clustering
structures must reflect the dynamics of the target data stream. The WiSARD
weightless perceptron, and its associated DRASiW extension, are intrinsically
capable of, respectively, performing one-shot learning and producing prototypes of
the learnt categories. This work introduces a simple generalization of RAM-based
neurons in order to explore both weightless neural models in the data stream
clustering problem.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Elenco autori:
DE GREGORIO, Massimo
Link alla scheda completa: