C. Charu, P. Aggarwal, and . Yu, Outlier detection for high dimensional data, ACM Sigmod Record, vol.30, pp.37-46, 2001.

G. Claeskens, L. Hubert, K. Slaets, and . Vakili, Multivariate Functional Halfspace Depth, J. Amer. Statist. Assoc, vol.109, pp.411-423, 2014.

A. Cuevas and M. Febrero, Robust estimation and classification for functional data via projection-based depth notions, Computational Statistics, vol.22, pp.481-496, 2007.

W. Dai and M. G. Genton, Directional outlyingness for multivariate functional data, Computational Statistics and Data Analysis, vol.131, 2019.

S. Datta and S. Das, Near-Bayesian support vector machines for imbalanced data classification with equal or unequal misclassification costs, Neural Networks, vol.70, pp.39-52, 2015.

R. Fraiman and G. Muniz, Trimmed means for functional data, Test, vol.10, pp.419-440, 2001.

L. Ary, . Goldberger, A. N. Luis, L. Amaral, . Glass et al., PhysioBank, PhysioToolkit, and PhysioNet: components of a new research resource for complex physiologic signals, vol.101, pp.215-220, 2000.

M. Hubert, P. J. Rousseeuw, and P. Segaert, Multivariate functional outlier detection, Statistical Methods and Applications, vol.24, 2015.

S. Kuhnt and A. Rehage, An angle-based multivariate functional pseudo-depth for shape outlier detection, Journal of Multivariate Analysis, vol.146, pp.325-340, 2016.

T. Fei, K. M. Liu, Z. Ting, and . Zhou, Isolation Forest, ICDM, 2008.

S. López-pintado, Y. Sun, K. Juan, M. G. Lin, and . Genton, Simplicial band depth for multivariate functional data, Advances in Data Analysis and Classification, vol.8, pp.321-338, 2014.

B. Art and . Owen, Infinitely imbalanced logistic regression, Journal of Machine Learning Research, vol.8, pp.761-773, 2007.

J. O. Ramsay and B. W. Silverman, Functional Data Analysis, 2006.

B. Schölkopf, C. John, J. Platt, A. J. Shawe-taylor, R. Smola et al., Estimating the support of a high-dimensional distribution, Neural computation, vol.13, pp.1443-1471, 2001.

A. Srivastava and E. P. Klassen, Functional and Shape Data Analysis, 2016.

W. Xie, O. Chkrebtii, and S. Kurtek, Visualization and Outlier Detection for Multivariate Elastic Curve Data, IEEE Transactions on Visualization and Computer Graphics, 2019.

Y. Zuo, Projection-based depth functions and associated medians, The Annals of Statistics, vol.31, pp.1460-1490, 2003.

Y. Zuo and R. Serfling, General Notions of Statistical Depth Function. The Annals of Statistics, vol.28, pp.461-482, 2000.