From low to high-dimensional moments without magic
classification
🧮 math.NA
keywords
momentsfirsthigh-dimensionallow-dimensionalprojectionsprojectorsalgebraicapproximate
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We aim to compute the first few moments of a high-dimensional random vector from the first few moments of a number of its low-dimensional projections. To this end, we identify algebraic conditions on the set of low-dimensional projectors that yield explicit reconstruction formulas. We also provide a computational framework, with which suitable projectors can be derived by solving an optimization problem. Finally, we show that randomized projections permit approximate recovery.
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