On the Beer index of convexity and its variants
Martin Balko, V\'it Jel\'inek, Pavel Valtr, Bartosz Walczak

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Abstract
Let be a subset of with finite positive Lebesgue measure. The Beer index of convexity of is the probability that two points of chosen uniformly independently at random see each other in . The convexity ratio of is the Lebesgue measure of the largest convex subset of divided by the Lebesgue measure of . We investigate the relationship between these two natural measures of convexity. We show that every set with simply connected components satisfies for an absolute constant , provided is defined. This implies an affirmative answer to the conjecture of Cabello et al. that this estimate holds for simple polygons. We also consider higher-order generalizations of . For $1\leq k\leq…
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