fastrerandomize: An R Package for Fast Rerandomization Using Accelerated Computing
The fastrerandomize R package provides hardware-accelerated tools for performing rerandomization and randomization testing in experimental research. Using a JAX backend, the package enables exact rerandomization inference even for large experiments with hundreds of billions of possible randomization...
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Zusammenfassung: | The fastrerandomize R package provides hardware-accelerated tools for
performing rerandomization and randomization testing in experimental research.
Using a JAX backend, the package enables exact rerandomization inference even
for large experiments with hundreds of billions of possible randomizations. Key
functionalities include generating pools of acceptable rerandomizations based
on covariate balance, conducting exact randomization tests, and performing
pre-analysis evaluations to determine optimal rerandomization acceptance
thresholds. Through batched processing and GPU acceleration, fastrerandomize
achieves substantial performance gains compared to existing implementations,
making previously intractable designs computationally feasible. The package
therefore extends the randomization-based inference toolkit in R, allowing
researchers to efficiently implement more stringent rerandomization designs and
conduct valid inference even with large sample sizes or in high-dimensional
settings. |
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DOI: | 10.48550/arxiv.2501.07642 |