Data Discovery and Anomaly Detection Using Atypicality for Real-Valued Data
Abstract
:1. Introduction
1.1. Anomaly Detection and Data Discovery Based on Description Length
1.2. Alternative Approaches
2. Minimum Description Length Methods
2.1. Sufficient Statistic Method (SSM)
- 1.
- The support of is independent of θ and its interior is connected.
- 2.
- The extended CDF of is continuous and differentiable.
- 3.
- The function is one-to-one, continuous, and differentiable for fixed θ.
2.2. Normalized Likelihood Method (NLM)
2.3. Examples
3. Scalar Signal Processing Methods
3.1. Iid Gaussian Case
3.1.1. Linear Transformations
3.2. Linear Prediction
3.3. Filterbanks and Wavelets
4. Vector Case
4.1. Vector Gaussian Case with Unknown Mean
4.2. Vector Gaussian Case with Unknown
4.3. Vector Gaussian Case with Unknown Mean and
4.4. Sparsity and DFT
5. Experimental Results
5.1. Transient Detection Using Hydrophone Recordings
5.2. Anomaly Detection Using Holter Monitoring Data
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A. Linear Prediction
Appendix B. Vector Gaussian Case: Unknown Σ
Appendix C. Vector Gaussian Case: Unknown Mean and
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Sabeti, E.; Høst-Madsen, A. Data Discovery and Anomaly Detection Using Atypicality for Real-Valued Data. Entropy 2019, 21, 219. https://doi.org/10.3390/e21030219
Sabeti E, Høst-Madsen A. Data Discovery and Anomaly Detection Using Atypicality for Real-Valued Data. Entropy. 2019; 21(3):219. https://doi.org/10.3390/e21030219
Chicago/Turabian StyleSabeti, Elyas, and Anders Høst-Madsen. 2019. "Data Discovery and Anomaly Detection Using Atypicality for Real-Valued Data" Entropy 21, no. 3: 219. https://doi.org/10.3390/e21030219
APA StyleSabeti, E., & Høst-Madsen, A. (2019). Data Discovery and Anomaly Detection Using Atypicality for Real-Valued Data. Entropy, 21(3), 219. https://doi.org/10.3390/e21030219