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Stratified & Latin Hypercube Sampling

Stratified sampling reduces Monte Carlo variance by dividing the domain into non-overlapping regions (strata) and sampling within each region.

#stratified sampling#latin hypercube sampling#variance reduction+11
Intermediate
Advanced
Filtering by:
#uniform marginals
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Sampling & Monte Carlo Methods