A R package for functional data analysis using the square root velocity framework which performs pair-wise and group-wise alignment as well as modeling using functional component analysis
v2.3.3 is on CRAN and can be installed as
install.packages("fdasrvf")`
For a more up to date, but may not be stable version from git repository.
library(devtools)
install_github("jdtuck/fdasrvf_R")
The package contains simu
dataset that is handy to
experiment with the available functions for functions in \(`\mathbb{R}^1`\).
We first visualize this dataset:
For that we first turn on class of functions present in the
f
for visualization:
library(fdasrvf)
f_plot(simu_data$time, simu_data$f)
We
can see that each curve
is a functionally closed 2D curve.
And we distinguish different patterns of miss-alignment, like X values
shrinking, small displacement, and many others.
We will now proceed with curve alignment for the curves of this class 1:
<- time_warping(simu_data$f, simu_data$time)
obj #> ℹ Using lambda = 0
#> ℹ Initializing...
#> ℹ Computing Karcher mean of 21 functions in SRSF space...
#> ℹ Entering iteration 1...
Let’s plot the result
plot(obj)
Tucker, J. D. 2014, Functional Component Analysis and Regression using Elastic Methods. Ph.D. Thesis, Florida State University.
Robinson, D. T. 2012, Function Data Analysis and Partial Shape Matching in the Square Root Velocity Framework. Ph.D. Thesis, Florida State University.
Huang, W. 2014, Optimization Algorithms on Riemannian Manifolds with Applications. Ph.D. Thesis, Florida State University.
Srivastava, A., Wu, W., Kurtek, S., Klassen, E. and Marron, J. S. (2011). Registration of Functional Data Using Fisher-Rao Metric. arXiv:1103.3817v2.
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J. D. Tucker, W. Wu, and A. Srivastava, “Phase-Amplitude Separation of Proteomics Data Using Extended Fisher-Rao Metric,” Electronic Journal of Statistics, Vol 8, no. 2. pp 1724-1733, 2014.
J. D. Tucker, W. Wu, and A. Srivastava, “Analysis of signals under compositional noise With applications to SONAR data,” IEEE Journal of Oceanic Engineering, Vol 29, no. 2. pp 318-330, Apr 2014.
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Cheng, W., Dryden, I. L., and Huang, X. (2016). Bayesian registration of functions and curves. Bayesian Analysis, 11(2), 447-475.
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J. D. Tucker, J. R. Lewis, and A. Srivastava, “Elastic Functional Principal Component Regression,” Statistical Analysis and Data Mining, vol. 12, no. 2, pp. 101-115, 2019.
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Q. Xie, S. Kurtek, E. Klassen, G. E. Christensen and A. Srivastava. Metric-based pairwise and multiple image registration. IEEE European Conference on Computer Vision (ECCV), September, 2014
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J. D. Tucker and D. Yarger, “Elastic Functional Changepoint Detection of Climate Impacts from Localized Sources”, Envirometrics, 10.1002/env.2826, 2023.