In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate time series data related to daily returns, volatility daily stocks returns, commodity prices, volume trading, index, enhanced index tracking portfolio, and so on. In the literature, following different methodological approaches, several clustering methods have been proposed for clustering multivariate time series. In this paper by adopting a fuzzy approach and using the Partitioning Around Medoids strategy, we suggest to cluster multivariate financial time series by considering the dynamic time warping distance. In particular, we proposed a robust clustering method capable to neutralize the negative effects of possible outliers in the cluste...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper we propose a framework for fuzzy clustering of time series based on directional volati...
In this paper we propose a framework for fuzzy clustering of time series based on directional volati...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper, following the Partitioning Around Medoids (PAM) approach and the fuzzy theory, we pro...
In this paper we propose a framework for fuzzy clustering of time series based on directional volati...
In this paper we propose a framework for fuzzy clustering of time series based on directional volati...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...