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DTSTART:20191027T010000
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DTSTART;TZID=Europe/Paris:20201012T140000
DTEND;TZID=Europe/Paris:20201012T170000
DTSTAMP:20260405T064517
CREATED:20200923T121846Z
LAST-MODIFIED:20201012T145623Z
UID:1832-1602511200-1602522000@datacraft.paris
SUMMARY:Machine learning for multivariate and functional anomaly detection
DESCRIPTION:This event is organized with the participation of Pavlo Mozharovskyi\, Telecom Paris. \nContent: \nAnomaly detection (Chandola et al.\, 2009) is a branch of machine learning which aims at identifying observations that exhibit abnormal behavior. Be it measurement errors\, disease development\, severe weather\, production quality default(s) (items) or failed equipment\, financial frauds or crisis events\, their on-time identification\, isolation and explanation constitute an important task in almost any branch of industry and science. \nDuring this workshop\, you will discuss the concept of data depth in both functional and multivariate settings\, review most common notion of the depth function (halfspace (Tukey\, 1975)\, projection (Zuo & Sefling\,2000)\, zonoid (Mosler\, 2002)\, spatial depth (Koltchinskii\, 1997); integrated (Claeskens et al.\, 2014) and curve (Lafaye De Micheaux et al.\, 2020) functional depths\, functional isolation forest Staerman et al. (2019)\, and focus on a number of real-world applications ranging from simulated situations to hurricane tracks and brain imaging. \nSoftware requirements: R (RStudio) for execution of R-notebooks (*.Rmd) and/or Python (Jupyter Notebook) for execution of Python-notebooks (*.ipynb). \nYou can visit the networking site of Pavlo Mozharovskyi and have access to the materials on this link. \n \n 
URL:https://datacraft.paris/event/machine-learning-for-multivariate-and-functional-anomaly-detection/
LOCATION:Online
ORGANIZER;CN="datacraft":MAILTO:contact@datacraft.paris
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