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Loraida Garcia

University of Puerto Rico
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 More details
  • University of Puerto Rico
    Graduate student
Areas of Interest
Philosophy of Cognitive Science
Philosophy of Social Science
  • All publications (4)
  •  25
    The editor has review copies of the following books. Potential reviewers should contact the editor to obtain a review copy ([email protected] phil. ufl. edu). Books not previously listed are in bold-faced type (review)
    with F. Funes, M. Bourque, and N. Pérez
    Agriculture and Human Values 19 273-274. 2002.
  •  1
    Streaming big time series forecasting based on nearest similar patterns with application to energy consumption
    with P. Jiménez-Herrera, G. Asencio-Cortés, and A. Troncoso
    Logic Journal of the IGPL. forthcoming.
    This work presents a novel approach to forecast streaming big time series based on nearest similar patterns. This approach combines a clustering algorithm with a classifier and the nearest neighbours algorithm. It presents two separate stages: offline and online. The offline phase is for training and finding the best models for clustering, classification and the nearest neighbours algorithm. The online phase is to predict big time series in real time. In the offline phase, data are divided into …Read more
    This work presents a novel approach to forecast streaming big time series based on nearest similar patterns. This approach combines a clustering algorithm with a classifier and the nearest neighbours algorithm. It presents two separate stages: offline and online. The offline phase is for training and finding the best models for clustering, classification and the nearest neighbours algorithm. The online phase is to predict big time series in real time. In the offline phase, data are divided into clusters and a forecasting model based on the nearest neighbours is trained for each cluster. In addition, a classifier is trained using the cluster assignments previously generated by the clustering algorithm. In the online phase, the classifier predicts the cluster label of an instance, and the proper nearest neighbours model according to the predicted cluster label is applied to obtain the final prediction using the similar patterns. The algorithm is able to be updated incrementally for online learning from data streams. Results are reported using electricity consumption with a granularity of $10$ minutes for 4-hour-ahead forecasting and compared with well-known online benchmark learners, showing a remarkable improvement in prediction accuracy.
    Science, Logic, and Mathematics
  • La doctrina sobre el Espíritu Santo en los Sermones de San Antonio de Padua
    Verdad y Vida 56 (222): 191-200. 1998.
  • ¿ Qué es un dispositivo
    Foucault, Deleuze, Agamben. A Parte Rei 74. 2011.
    Gilles DeleuzeMichel FoucaultGiorgio Agamben
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