2021
DOI: 10.3390/a14080232
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A General Cooperative Optimization Approach for Distributing Service Points in Mobility Applications

Abstract: This article presents a cooperative optimization approach (COA) for distributing service points for mobility applications, which generalizes and refines a previously proposed method. COA is an iterative framework for optimizing service point locations, combining an optimization component with user interaction on a large scale and a machine learning component that learns user needs and provides the objective function for the optimization. The previously proposed COA was designed for mobility applications in whi… Show more

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Cited by 4 publications
(1 citation statement)
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“…The paper [5] presents a cooperative optimization approach distributing service points for mobility In contrast to former works, the authors extend previous approaches towards applications in which the satisfaction of demand relies typically on the existence of appropriate pairs or tuples of service stations as it occurs for instance in care sharing systems. The authors apply a new matrix factorization model as surrogate objective function, and then a MILP model is used to generate an optimized solution with respect to the currently known user information.…”
Section: Special Issuementioning
confidence: 99%
“…The paper [5] presents a cooperative optimization approach distributing service points for mobility In contrast to former works, the authors extend previous approaches towards applications in which the satisfaction of demand relies typically on the existence of appropriate pairs or tuples of service stations as it occurs for instance in care sharing systems. The authors apply a new matrix factorization model as surrogate objective function, and then a MILP model is used to generate an optimized solution with respect to the currently known user information.…”
Section: Special Issuementioning
confidence: 99%