The problem of detecting clusters is a common issue in the analysis of functional data and some interesting intuitions from approaches relied on depth measures can be considered for construction of basic tools for clustering of curves. Motivated by recent contributions on the problem clustering and alignment of functional data, we also consider the problem of aligning a set of curves when classification procedures are implemented. The variability among curves can be interpreted in terms of two components, phase and amplitude; phase variability, or misalignment, can be eliminated by aligning the curves, according to a similarity index and a warping function. Some approaches address the misalignment as a confounding factor, if it is not suita...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
A problem, often encountered in functional data analysis, is misalignment of the data. Many methods ...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
The problem of curve clustering when curves are misaligned is considered. A novel algorithm is descr...
We present a new framework for clustering functional data along with a new paradigm for performing m...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
When functional data come as multiple curves per subject, characterizing the source of variations is...
Abstract. Looking for curves similarity could be a complex issue characterized by subjective choices...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
[[abstract]]A correlation-based functional clustering method is proposed for grouping curves with si...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
A problem, often encountered in functional data analysis, is misalignment of the data. Many methods ...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
The problem of curve clustering when curves are misaligned is considered. A novel algorithm is descr...
We present a new framework for clustering functional data along with a new paradigm for performing m...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
When functional data come as multiple curves per subject, characterizing the source of variations is...
Abstract. Looking for curves similarity could be a complex issue characterized by subjective choices...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
[[abstract]]A correlation-based functional clustering method is proposed for grouping curves with si...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
Looking for curves similarity could be a complex issue characterized by subjective choices related t...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...