2022
DOI: 10.1287/mnsc.2020.3867
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Prescriptive Analytics for Flexible Capacity Management

Abstract: Motivated by the real-world problem of a logistics company, this paper proposes a novel distribution-free prescriptive analytics approach—termed kernelized empirical risk minimization (kernelized ERM)—to solve a complex two-stage capacity planning problem with multivariate demand and vector-valued capacity decisions and compares this approach both theoretically and numerically with an extension of the well-known sample average approximation (SAA) approach termed weighted SAA. Both approaches use integrated mac… Show more

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Cited by 29 publications
(35 citation statements)
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References 18 publications
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“…Oroojlooyjadid et al applied a deep learning model to optimize the order quantities for the newsvendor problem based on features of the demand data [30]. Notz and Pibernik proposed a machine-learning approach termed kernelized empirical risk minimization to prescribe optimal decisions for capacity management problems [38]. The end-to-end framework seems attractive because it outputs decisions directly by accepting feature data as input.…”
Section: Machine Learningmentioning
confidence: 99%
“…Oroojlooyjadid et al applied a deep learning model to optimize the order quantities for the newsvendor problem based on features of the demand data [30]. Notz and Pibernik proposed a machine-learning approach termed kernelized empirical risk minimization to prescribe optimal decisions for capacity management problems [38]. The end-to-end framework seems attractive because it outputs decisions directly by accepting feature data as input.…”
Section: Machine Learningmentioning
confidence: 99%
“…Our work contributes to two primary streams of literature. First, it relates to contextual stochastic optimization problems, where decision makers observe previous samples of the uncertain parameter, along with features providing additional information about the uncertainty [3,5,[14][15][16][17][18]. Besides the widely-used PO framework, several advanced frameworks have emerged, which prescribe decisions directly from data.…”
Section: Related Literature and Contributionsmentioning
confidence: 99%
“…Besides the widely-used PO framework, several advanced frameworks have emerged, which prescribe decisions directly from data. They include the smart predict-then-optimize framework [16,19], the weighted SAA (wSAA) framework [17,18], the empirical risk minimization framework [14,17], and the kernel optimization framework [5,14,17,20]. Theoretically, these works have demonstrated the asymptotic optimality of these frameworks, i.e., whether the data-driven solutions can converge to the fullinformation optimal solution as data size approaches infinity [9].…”
Section: Related Literature and Contributionsmentioning
confidence: 99%
“…Our work contributes to two key areas of literature. Firstly, it relates to prescriptive analytics frameworks, in which decision-makers leverage contextual data about uncertainty to make informed decisions [1,2,[11][12][13][14]. Several advanced frameworks have been developed, including the smart predict-then-optimize framework [13,15], the wSAA framework [10,14], the empirical risk minimization framework [12,14], and the kernel optimization framework [2,12,14,16].…”
Section: Related Literature and Contributionsmentioning
confidence: 99%