Random assignment, typically seen as the standard in controlled trials, aims to make experimental groups statistically equivalent before treatment. However, with a small sample, which is a practical reality in many disciplines, randomized groups are often too dissimilar to be useful. We propose an approach based on discrete linear optimization (*) to create groups whose discrepancy in their means and variances is several orders of magnitude smaller than with randomization. We provide theoretical and computational evidence that groups created by optimization have exponentially lower discrepancy than those created by randomization and that this allows for more powerful statistical inference.(*) Equation (1) in the paper.
3/22/2019
The Power of Optimization Over Randomization in Designing Experiments Involving Small Samples
D. Bertsimas, M. Johnson, and N. Kallus, The Power of Optimization Over Randomization in Designing Experiments Involving Small Samples, Operations Research, Vol. 63, No. 4, July–August 2015, pp. 868–876.
訂閱:
張貼留言 (Atom)
沒有留言:
張貼留言