Feb. 6, 2024, 5:49 a.m. | Michael Multerer Paul Schneider Rohan Sen

cs.LG updates on arXiv.org arxiv.org

We seek to extract a small number of representative scenarios from large and high-dimensional panel data that are consistent with sample moments. Among two novel algorithms, the first identifies scenarios that have not been observed before, and comes with a scenario-based representation of covariance matrices. The second proposal picks important data points from states of the world that have already realized, and are consistent with higher-order sample moment information. Both algorithms are efficient to compute, and lend themselves to consistent …

algorithms consistent covariance cs.lg cs.na data extract math.na moments novel panel q-fin.rm representation sample small stat.ml world

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