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**15 Articles and Tutorials about Outliers**

- Extreme Events Modeling Using Continued Fractions
- Distribution of Arrival Times for Extreme Events
- Robust Regressions: Dealing with Outliers
- Outlier detection with time-series data mining
- Multivariate Outlier Detection
- Sometimes outliers are real data
- Outlier Detection with Parametric and Non-Parametric methods
- Introduction to Outlier Detection Methods
- Neutralizing Outliers in Any Dimension
- Identify, describe, plot, and remove the outliers with R
- Outlier detection using cluster analysis
- Multidimensional outlier detection in time series
- Bayesian Outlier Detection with Dirichlet Process Mixtures
- Book: Outlier Detection for Temporal Data
- Outlier analysis: Chebyschev criteria vs Mutual Information

**Forum Questions**

- Question: outlier detection and supervised machine learning
- Question: Outliers in Logistic Regression
- Question: Can regression be used for outlier detection

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