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An integrated approach to a combinatorial optimisation problem

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An integrated approach to a combinatorial optimisation problem. / Bowles, Juliana; Caminati, Marco B.
Integrated Formal Methods. Vol. 11918 Springer, 2019. p. 204-382.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

Harvard

Bowles, J & Caminati, MB 2019, An integrated approach to a combinatorial optimisation problem. in Integrated Formal Methods. vol. 11918, Springer, pp. 204-382. https://doi.org/10.1007/978-3-030-34968-4_16

APA

Bowles, J., & Caminati, M. B. (2019). An integrated approach to a combinatorial optimisation problem. In Integrated Formal Methods (Vol. 11918, pp. 204-382). Springer. https://doi.org/10.1007/978-3-030-34968-4_16

Vancouver

Bowles J, Caminati MB. An integrated approach to a combinatorial optimisation problem. In Integrated Formal Methods. Vol. 11918. Springer. 2019. p. 204-382 doi: 10.1007/978-3-030-34968-4_16

Author

Bowles, Juliana ; Caminati, Marco B. / An integrated approach to a combinatorial optimisation problem. Integrated Formal Methods. Vol. 11918 Springer, 2019. pp. 204-382

Bibtex

@inproceedings{e2733f812eea4ce1b937a93e8e2748cf,
title = "An integrated approach to a combinatorial optimisation problem",
abstract = "We take inspiration from a problem from the healthcare domain, where patients with several chronic conditions follow different guidelines designed for the individual conditions, and where the aim is to find the best treatment plan for a patient that avoids adverse drug reactions, respects patient{\textquoteright}s preferences and prioritises drug efficacy. Each chronic condition guideline can be abstractly described by a directed graph, where each node indicates a treatment step (e.g., a choice in medications or resources) and has a certain duration. The search for the best treatment path is seen as a combinatorial optimisation problem and we show how to select a path across the graphs constrained by a notion of resource compatibility. This notion takes into account interactions between any finite number of resources, and makes it possible to express non-monotonic interactions. Our formalisation also introduces a discrete temporal metric, so as to consider only simultaneous nodes in the optimisation process. We express the formal problem as an SMT problem and provide a correctness proof of the SMT code by exploiting the interplay between SMT solvers and the proof assistant Isabelle/HOL. The problem we consider combines aspects of optimal graph execution and resource allocation, showing how an SMT solver can be an alternative to other approaches which are well-researched in the corresponding domains.",
author = "Juliana Bowles and Caminati, {Marco B.}",
year = "2019",
month = nov,
day = "22",
doi = "10.1007/978-3-030-34968-4_16",
language = "English",
isbn = "9783030349684",
volume = "11918",
pages = "204--382",
booktitle = "Integrated Formal Methods",
publisher = "Springer",

}

RIS

TY - GEN

T1 - An integrated approach to a combinatorial optimisation problem

AU - Bowles, Juliana

AU - Caminati, Marco B.

PY - 2019/11/22

Y1 - 2019/11/22

N2 - We take inspiration from a problem from the healthcare domain, where patients with several chronic conditions follow different guidelines designed for the individual conditions, and where the aim is to find the best treatment plan for a patient that avoids adverse drug reactions, respects patient’s preferences and prioritises drug efficacy. Each chronic condition guideline can be abstractly described by a directed graph, where each node indicates a treatment step (e.g., a choice in medications or resources) and has a certain duration. The search for the best treatment path is seen as a combinatorial optimisation problem and we show how to select a path across the graphs constrained by a notion of resource compatibility. This notion takes into account interactions between any finite number of resources, and makes it possible to express non-monotonic interactions. Our formalisation also introduces a discrete temporal metric, so as to consider only simultaneous nodes in the optimisation process. We express the formal problem as an SMT problem and provide a correctness proof of the SMT code by exploiting the interplay between SMT solvers and the proof assistant Isabelle/HOL. The problem we consider combines aspects of optimal graph execution and resource allocation, showing how an SMT solver can be an alternative to other approaches which are well-researched in the corresponding domains.

AB - We take inspiration from a problem from the healthcare domain, where patients with several chronic conditions follow different guidelines designed for the individual conditions, and where the aim is to find the best treatment plan for a patient that avoids adverse drug reactions, respects patient’s preferences and prioritises drug efficacy. Each chronic condition guideline can be abstractly described by a directed graph, where each node indicates a treatment step (e.g., a choice in medications or resources) and has a certain duration. The search for the best treatment path is seen as a combinatorial optimisation problem and we show how to select a path across the graphs constrained by a notion of resource compatibility. This notion takes into account interactions between any finite number of resources, and makes it possible to express non-monotonic interactions. Our formalisation also introduces a discrete temporal metric, so as to consider only simultaneous nodes in the optimisation process. We express the formal problem as an SMT problem and provide a correctness proof of the SMT code by exploiting the interplay between SMT solvers and the proof assistant Isabelle/HOL. The problem we consider combines aspects of optimal graph execution and resource allocation, showing how an SMT solver can be an alternative to other approaches which are well-researched in the corresponding domains.

U2 - 10.1007/978-3-030-34968-4_16

DO - 10.1007/978-3-030-34968-4_16

M3 - Conference contribution/Paper

SN - 9783030349684

SN - 9783030349677

VL - 11918

SP - 204

EP - 382

BT - Integrated Formal Methods

PB - Springer

ER -