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On the Robust Optimization to the Uncertain Vaccination Strategy Problem

On the Robust Optimization to the Uncertain Vaccination Strategy Problem
D. Chaerani, N. Anggriani, Firdaniza
Universitas Padjadjaran, AIP Conference Proceedings 1587, 34 (2014); doi: 10.1063/1.4866528 View online: https://dx.doi.org/10.1063/1.4866528
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Universitas Padjadjaran, AIP Conference Proceedings 1587, 34 (2014); doi: 10.1063/1.4866528 View online: https://dx.doi.org/10.1063/1.4866528
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In order to prevent an epidemic of infectious diseases, the vaccination coverage needs to be minimized and also the basic reproduction number needs to be maintained below 1. This means that as we get the vaccination coverage as minimum as possible, thus we need to prevent the epidemic to a small number of people who already get infected. In this paper, we discuss the case of vaccination strategy in term of minimizing vaccination coverage, when the basic reproduction number is assumed as an uncertain parameter that lies between 0 and 1. We refer to the linear optimization model for vaccination strategy that propose by Becker and Starrzak (see [2]). Assuming that there is parameter uncertainty involved, we can see Tanner et al (see [9]) who propose the optimal solution of the problem using stochastic programming. In this paper we discuss an alternative way of optimizing the uncertain vaccination strategy using Robust Optimization (see [3]). In this approach we assume that the parameter uncertainty lies within an ellipsoidal uncertainty set such that we can claim that the obtained result will be achieved in a polynomial time algorithm (as it is guaranteed by the RO methodology). The robust counterpart model is presented.

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