In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propose a robust clustering model for classifying time series. In particular, by adopting a fuzzy partitioning around medoids approach, the suggested clustering model is able to define the so-called medoid time series, which is a representative time series of each cluster, and the membership degrees of each time series to the different clusters. The robustness of the proposed clustering model is guaranteed by the adoption of a suitable robust metric for time series, i.e. the so-called exponential distance measure. In this way, the clustering model is able to tolerate the presence of outlier time series in the clustering process. In particular,...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
We propose a robust fuzzy clustering model for classifying time series, considering the autoregressi...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
In this paper, following a fuzzy approach and adopting an autoregressive parameterization, we propos...
We propose a robust fuzzy clustering model for classifying time series, considering the autoregressi...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Abstract We propose a robust fuzzy clustering model for classifying time series, considering the aut...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...
Air quality measurement relies on the effectiveness of a network of monitoring stations. Monitoring ...