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Statistics / Algebra / Error / Hypothesis testing / Design of experiments / Multivariate statistics / Measurement / Principal component analysis / Anomaly detection / Eigenvalues and eigenvectors / Type I and type II errors / Errors and residuals
Date: 2007-02-27 15:27:27
Statistics
Algebra
Error
Hypothesis testing
Design of experiments
Multivariate statistics
Measurement
Principal component analysis
Anomaly detection
Eigenvalues and eigenvectors
Type I and type II errors
Errors and residuals

Communication-Efficient Online Detection of Network-Wide Anomalies Ling Huang∗ XuanLong Nguyen∗ Minos Garofalakis† Joseph M. Hellerstein∗ Michael I. Jordan∗ Anthony D. Joseph∗ Nina Taft† ∗ UC Berkeley †

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