Created by: xhan97
This PR implements the following:
Bandaragoda, T. R., Ting, K. M., Albrecht, D., Liu, F. T., Zhu, Y., and Wells, J. R., 2018, "Isolation-based anomaly detection using nearest-neighbor ensembles". Computational Intelligence, 34(4), pp. 968-998.
iNNE is proposed to overcome key weaknesses of iForest. May you please include this function in your PyOD package?
Best regards, Xin
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