Synthetic data, when properly used, can enhance patterns in real data and thus provide insights into different problems. Here, the estimation of tail probabilities of rare events from a moderately large number of observations is considered. The problem is approached by a large number of augmentations or fusions of the real data with computer-generated synthetic samples. The tail probability of interest is approximated by subsequences created by a novel iterative process. The estimates are found to be quite precise.
CITATION STYLE
Kedem, B., & Pyne, S. (2021). Estimation of Tail Probabilities by Repeated Augmented Reality. Journal of Statistical Theory and Practice, 15(2). https://doi.org/10.1007/s42519-020-00152-1
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