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fabisearch  

Change Point Detection in High-Dimensional Time Series Networks
View on CRAN: Click here


Download and install fabisearch package within the R console
Install from CRAN:
install.packages("fabisearch")

Install from Github:
library("remotes")
install_github("cran/fabisearch")

Install by package version:
library("remotes")
install_version("fabisearch", "0.0.4.5")



Attach the package and use:
library("fabisearch")
Maintained by
Martin Ondrus
[Scholar Profile | Author Map]
First Published: 2021-02-24
Latest Update: 2023-01-12
Description:
Implementation of the Factorized Binary Search (FaBiSearch) methodology for the estimation of the number and the location of multiple change points in the network (or clustering) structure of multivariate high-dimensional time series. The method is motivated by the detection of change points in functional connectivity networks for functional magnetic resonance imaging (fMRI) data. FaBiSearch uses non-negative matrix factorization (NMF), an unsupervised dimension reduction technique, and a new binary search algorithm to identify multiple change points. It requires minimal assumptions. Lastly, we provide interactive, 3-dimensional, brain-specific network visualization capability in a flexible, stand-alone function. This function can be conveniently used with any node coordinate atlas, and nodes can be color coded according to community membership, if applicable. The output is an elegantly displayed network laid over a cortical surface, which can be rotated in the 3-dimensional space. The main routines of the package are detect.cps(), for multiple change point detection, est.net(), for estimating a network between stationary multivariate time series, net.3dplot(), for plotting the estimated functional connectivity networks, and opt.rank(), for finding the optimal rank in NMF for a given data set. The functions have been extensively tested on simulated multivariate high-dimensional time series data and fMRI data. For details on the FaBiSearch methodology, please see Ondrus et al. (2021) . For a more detailed explanation and applied examples of the fabisearch package, please see Ondrus and Cribben (2022), preprint.
How to cite:
Martin Ondrus (2021). fabisearch: Change Point Detection in High-Dimensional Time Series Networks. R package version 0.0.4.5, https://cran.r-project.org/web/packages/fabisearch. Accessed 29 Mar. 2025.
Previous versions and publish date:
0.0.2.4 (2021-02-24 10:40), 0.0.3.6 (2021-10-09 17:00), 0.0.3.9 (2021-11-23 10:20), 0.0.4.1 (2022-02-08 04:30), 0.0.4.3 (2022-03-03 21:00), 0.0.4.4 (2022-03-15 23:20)
Other packages that cited fabisearch R package
View fabisearch citation profile
Other R packages that fabisearch depends, imports, suggests or enhances
Complete documentation for fabisearch
Functions, R codes and Examples using the fabisearch R package
Some associated functions: AALatlas . AALfmri . adjmatrix . detect.cps . est.net . fabisearch . gordatlas . gordfmri . logSP500 . net.3dplot . opt.rank . sim2 . 
Some associated R codes: data.R . detect.cps.R . est.net.R . net.3dplot.R . opt.rank.R . perm_distr.R . permute_split.R . refit_splits.R . sign_splits.R . split_all.R .  Full fabisearch package functions and examples
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