Looking for curves similarity could be a complex issue characterized by subjective choices related to continuous transformations of observed discrete data (Chiodi, 1989). In this paper we combine the aim of finding clusters from a set of individual curves to the functional nature of data, applying a variant of a k-means algorithm based on the principal component rotation of data. We apply a classical clustering method to rotated data, according to the direction of maximum variance. A k-means clustering algorithm based on PCA rotation of data is proposed, as an alternative to methods that require previous interpolation of data based on splines or linear fitting (Garc´ıa- Escudero and Gordaliza (2005), Tarpey (2007), Sangalli et al. (2...
Principal axis analysis rotates principal components to optimally detect cluster structure, rotation...
This paper proposes a new robust approach to nonlinear clustering based on the Principal Component A...
Principal component analysis (PCA) is a ubiquitous statistical technique for data analysis. PCA is ...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
Abstract. Looking for curves similarity could be a complex issue characterized by subjective choices...
Looking for curves similarity could be a complex issue characterized by subjective choices related ...
Similar features between waveform data recorded for earthquakes at different time instants could sug...
The necessity of nding similar features of waveforms data recorded for earthquakes at di erent tim...
In this paper we focus on finding clusters of multidimensional curves with spatio-temporal structure...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
In this paper we focus on finding clusters of multidimensional curves with spatio-tempora...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
In this paper we propose a novel clustering method for functional data based on the principal curve ...
While multivariate data analysis is concerned with data in the form of random vectors, functional da...
The extraordinary advancements in neuroscientific technology for brain recordings over the last deca...
Principal axis analysis rotates principal components to optimally detect cluster structure, rotation...
This paper proposes a new robust approach to nonlinear clustering based on the Principal Component A...
Principal component analysis (PCA) is a ubiquitous statistical technique for data analysis. PCA is ...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
Abstract. Looking for curves similarity could be a complex issue characterized by subjective choices...
Looking for curves similarity could be a complex issue characterized by subjective choices related ...
Similar features between waveform data recorded for earthquakes at different time instants could sug...
The necessity of nding similar features of waveforms data recorded for earthquakes at di erent tim...
In this paper we focus on finding clusters of multidimensional curves with spatio-temporal structure...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
In this paper we focus on finding clusters of multidimensional curves with spatio-tempora...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
In this paper we propose a novel clustering method for functional data based on the principal curve ...
While multivariate data analysis is concerned with data in the form of random vectors, functional da...
The extraordinary advancements in neuroscientific technology for brain recordings over the last deca...
Principal axis analysis rotates principal components to optimally detect cluster structure, rotation...
This paper proposes a new robust approach to nonlinear clustering based on the Principal Component A...
Principal component analysis (PCA) is a ubiquitous statistical technique for data analysis. PCA is ...