In this paper we consider a new approach for the selection of past samples to be used for prediction. Instead of using classical algorithms for estimating the embedding parameters, we will use a genetic algorithm where each individual represents a possible embedding solution. We will demonstrate that the proposed technique is particularly suited when dealing with the prediction of biological time series, aiming to improve the road safety by evidencing stress conditions or possible loss of consciousness.
Prediction of Biological Time Series by Genetic Embedding / Panella, Massimo; Barcellona, Francesco; Orlandi, Gianni. - ELETTRONICO. - (2009), pp. 41-44. (Intervento presentato al convegno International Symposium on Bioelectronics & Bioinformatics tenutosi a Melbourne, Australia nel 09-11 dicembre 2009).
Prediction of Biological Time Series by Genetic Embedding
PANELLA, Massimo;BARCELLONA, FRANCESCO;ORLANDI, Gianni
2009
Abstract
In this paper we consider a new approach for the selection of past samples to be used for prediction. Instead of using classical algorithms for estimating the embedding parameters, we will use a genetic algorithm where each individual represents a possible embedding solution. We will demonstrate that the proposed technique is particularly suited when dealing with the prediction of biological time series, aiming to improve the road safety by evidencing stress conditions or possible loss of consciousness.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.