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A Decomposition of Total Variation Depth for Understanding Functional Outliers
Huang Huang,
Ying Sun
Statistics
Computer, Electrical and Mathematical Sciences and Engineering
Research output
:
Contribution to journal
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Article
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peer-review
13
Scopus citations
Overview
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Computer Science
Total Variation
100%
Functional Data
100%
Outlier Detection
50%
Visualization Tool
25%
Detection Performance
25%
Multivariate Data
25%
Dimensional Object
25%
Effective Procedure
25%
Mathematics
Total Variation
100%
Functional Data
100%
Outlier Detection
50%
Outlyingness
25%
Dimensional Object
25%
Image Curve
25%
Extensive Work
25%
Effective Procedure
25%
Engineering
Total Variation
100%
Outlier Detection
66%
Detection Performance
33%
Keyphrases
Functional Outliers
100%
Depth Function
25%
Shape Outliers
25%