A Gaussian limit process for optimal FIND algorithms
Abstract
We consider versions of the FIND algorithm where the pivot element used is the median of a subset chosen uniformly at random from the data. For the median selection we assume that subsamples of size asymptotic to c · nα are chosen, where 0<α 12, c>0 and n is the size of the data set to be split. We consider the complexity of FIND as a process in the rank to be selected and measured by the number of key comparisons required. After normalization we show weak convergence of the complexity to a centered Gaussian process as n∞, which depends on α. The proof relies on a contraction argument for probability distributions on c\`adl\`ag functions. We also identify the covariance function of the Gaussian limit process and discuss path and tail properties.
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