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2019-10-15-staerman19a.md

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title crossref abstract layout series id month tex_title firstpage lastpage page order cycles bibtex_author author date address publisher container-title volume genre issued pdf extras
Functional Isolation Forest
acml19
For the purpose of monitoring the behavior of complex infrastructures (\textit{e.g.} aircrafts, transport or energy networks), high-rate sensors are deployed to capture multivariate data, generally unlabeled, in quasi continuous-time to detect quickly the occurrence of anomalies that may jeopardize the smooth operation of the system of interest. The statistical analysis of such massive data of functional nature raises many challenging methodological questions. The primary goal of this paper is to extend the popular {\scshape Isolation Forest} (IF) approach to Anomaly Detection, originally dedicated to finite dimensional observations, to functional data. The major difficulty lies in the wide variety of topological structures that may equip a space of functions and the great variety of patterns that may characterize abnormal curves. We address the issue of (randomly) splitting the functional space in a flexible manner in order to isolate progressively any trajectory from the others, a key ingredient to the efficiency of the algorithm. Beyond a detailed description of the algorithm, computational complexity and stability issues are investigated at length. From the scoring function measuring the degree of abnormality of an observation provided by the proposed variant of the IF algorithm, a \textit{Functional Statistical Depth} function is defined and discussed, as well as a multivariate functional extension. Numerical experiments provide strong empirical evidence of the accuracy of the extension proposed.
inproceedings
Proceedings of Machine Learning Research
staerman19a
0
Functional Isolation Forest
332
347
332-347
332
false
Staerman, Guillaume and Mozharovskyi, Pavlo and Cl\'emen\c{c}on, Stephan and d'Alch\'e-Buc, Florence
given family
Guillaume
Staerman
given family
Pavlo
Mozharovskyi
given family
Stephan
Clémençon
given family
Florence
d’Alché-Buc
2019-10-15
PMLR
Proceedings of The Eleventh Asian Conference on Machine Learning
101
inproceedings
date-parts
2019
10
15