gfpop : An R Package for Univariate Graph-Constrained Change-Point Detection

Runge, Vincent and Hocking, Toby Dylan and Romano, Gaetano and Afghah, Fatemeh and Fearnhead, Paul and Rigaill, Guillem (2023) gfpop : An R Package for Univariate Graph-Constrained Change-Point Detection. Journal of Statistical Software, 106 (6). 1–39. ISSN 1548-7660

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Abstract

In a world with data that change rapidly and abruptly, it is important to detect those changes accurately. In this paper we describe an R package implementing a generalized version of an algorithm recently proposed by Hocking, Rigaill, Fearnhead, and Bourque (2020) for penalized maximum likelihood inference of constrained multiple change-point models. This algorithm can be used to pinpoint the precise locations of abrupt changes in large data sequences. There are many application domains for such models, such as medicine, neuroscience or genomics. Often, practitioners have prior knowledge about the changes they are looking for. For example in genomic data, biologists sometimes expect peaks: up changes followed by down changes. Taking advantage of such prior information can substantially improve the accuracy with which we can detect and estimate changes. Hocking et al. (2020) described a graph framework to encode many examples of such prior information and a generic algorithm to infer the optimal model parameters, but implemented the algorithm for just a single scenario. We present the gfpop package that implements the algorithm in a generic manner in R/C++. gfpop works for a user-defined graph that can encode prior assumptions about the types of changes that are possible and implements several loss functions (Gauss, Poisson, binomial, biweight, and Huber). We then illustrate the use of gfpop on isotonic simulations and several applications in biology. For a number of graphs the algorithm runs in a matter of seconds or minutes for 105 data points.

Item Type:
Journal Article
Journal or Publication Title:
Journal of Statistical Software
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1700/1712
Subjects:
?? change-point detectionconstrained inferencemaximum likelihood inferencedynamic programmingrobust lossessoftwarestatistics and probabilitystatistics, probability and uncertainty ??
ID Code:
189972
Deposited By:
Deposited On:
29 Mar 2023 12:30
Refereed?:
Yes
Published?:
Published
Last Modified:
21 Dec 2023 08:20