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Handbook on Intelligent Healthcare Analytics


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1.146966e+10 std 30.399233 3.199525e+10 min 1900.000000 0.000000e+00 25% 1959.000000 6.50000e+07 50% 1984.000000 8.400000e+07 75% 2001.000000 5.444777e+09 max 2018.000000 3.640932e+11 Schematic illustration of changes from various impacts from natural disaster.

Schematic illustration of economic damage changes a prediction analysis. Schematic illustration of boxplot view of natural disaster on various entity.

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      1 *Corresponding author: [email protected]