Markov chain analysis for the neonatal inpatient flow in a hospital

Yuta Kanai1, Hideaki Takagi2
1Tsukuba Institute of Research, 1-7 Takezono, Tsukuba-shi, Ibaraki-ken, 305-0032, Japan
2University of Tsukuba (Professor Emeritus), Chigasaki-shi, Japan

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