2020
DOI: 10.1007/s10288-020-00442-1
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Exact distributional analysis of online algorithms with lookahead

Abstract: In online optimization, input data is revealed sequentially. Optimization problems in practice often exhibit this type of information disclosure as opposed to standard offline optimization where all information is known in advance. We analyze the performance of algorithms for online optimization with lookahead using a holistic distributional approach. To this end, we first introduce the performance measurement method of counting distribution functions. Then, we derive analytical expressions for the counting di… Show more

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References 30 publications
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