Microscopy as a statistical, Rényi-Ulam, half-lie game: A new heuristic search strategy to accelerate imaging

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Abstract

Finding a fluorescent target in a biological environment is a common and pressing microscopy problem. This task is formally analogous to the canonical search problem. In ideal (noise-free, truthful) search problems, the well-known binary search is optimal. The case of half-lies, where one of two responses to a search query may be deceptive, introduces a richer, Rényi-Ulam problem and is particularly relevant to practical microscopy. We analyse microscopy in the contexts of Rényi-Ulam games and half-lies, developing a new family of heuristics. We show the cost of insisting on verification by positive result in search algorithms; for the zero-half-lie case bisectioning with verification incurs a 50% penalty in the average number of queries required. The optimal partitioning of search spaces directly following verification in the presence of random half-lies is determined. Trisectioning with verification is shown to be the most efficient heuristic of the family in a majority of cases.

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Drumm, D. W., & Greentree, A. D. (2017). Microscopy as a statistical, Rényi-Ulam, half-lie game: A new heuristic search strategy to accelerate imaging. Scientific Reports, 7(1). https://doi.org/10.1038/s41598-017-14876-x

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