TY - JOUR SP - 56 PB - International Center for Scientific Research and Studies AV - none ID - scholars6204 EP - 71 N2 - Classification of weather time series is beneficial for weather forecasting problem. The classification can assist in identifying weather patterns for certain periods. In addition, extracting patterns from weather time series provides useful insights about the weather conditions to the domain experts. In this paper, we present the classification of weather time series using feature based approach that extracts feature vectors from the time series and performs the classification based on local and global features. The experimental results show that feature-based method with random forest performs well with more number of subsequences and may achieve comparable results with other methods. SN - 20748523 IS - Specia TI - Classifying weather time series using featurebased approach VL - 7 JF - International Journal of Advances in Soft Computing and its Applications A1 - Taib, S.M. A1 - Bakar, A.A. A1 - Hamdan, A.R. A1 - Abdullah, S.M.S. N1 - cited By 5 UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-84949814918&partnerID=40&md5=c22cc76cdda2d8a75fb5acfdeea5b29d Y1 - 2015/// ER -