BIBLIOS

  Ciências References Management System

Visitor Mode (Login)
Need help?


Back

Publication details

Document type
Journal articles

Document subtype
Full paper

Title
Learning target-based preferences through additive models: An application in radiotherapy treatment planning

Participants in the publication
Luis C. Dias (Author)
Joana Dias (Author)
Tiago Ventura (Author)
Humberto Rocha (Author)
Brígida Ferreira (Author)
Dep. Física
IBEB
Leila Khouri (Author)
Maria do Carmo Lopes (Author)

Summary
This article presents a new Multi-Criteria Decision Aiding preference disaggregation method based on an asymmetric target-based model. The decision maker's preferences are elicited considering the choices made given a set of comparisons among pairs of solutions (the stimuli). It is assumed that the decision maker has a reference value (target) for the stimulus. Solutions that do not comply with this reference value for some of the criteria dimensions considered will be penalized, and an inferred weight is associated with each dimension to calculate a penalty score for each solution. One of the differentiating features of the proposed model when compared with other existing models is the fact that only solutions that do not meet the target are penalized. The target is not interpreted as an ideal solution, but as a set of threshold values that should be taken into account when choosing a solution. The proposed approach was applied to the problem of choosing radiotherapy treatment plans, using a set of retrospective cancer cases treated at the Portuguese Oncology Institute of Coimbra. Using paired comparison choices made by one radiation oncologist, the preference model was built and was tested with in-sample and out-of-sample data. It is possible to conclude that the preference model is capable of representing the radiation oncologist's preferences, presenting small mean errors and leading, most of the time, to the same treatment plan chosen by the radiation oncologist.

Date of Publication
2021-12

Where published
European Journal of Operational Research

Publication Identifiers
ISSN - 0377-2217

Publisher
Elsevier BV

Document Identifiers
DOI - https://doi.org/10.1016/j.ejor.2021.12.011
URL - http://dx.doi.org/10.1016/j.ejor.2021.12.011

Rankings
Web Of Science Q1 (2020) - 5.334 - OPERATIONS RESEARCH & MANAGEMENT SCIENCE - SCIE
SCOPUS Q1 (2019) - 8.5 - Management Science and Operations Research
SCIMAGO Q1 (2020) - 2.161 - Management Science and Operations Research


Export

APA
Luis C. Dias, Joana Dias, Tiago Ventura, Humberto Rocha, Brígida Ferreira, Leila Khouri, Maria do Carmo Lopes, (2021). Learning target-based preferences through additive models: An application in radiotherapy treatment planning. European Journal of Operational Research, ISSN 0377-2217. eISSN . http://dx.doi.org/10.1016/j.ejor.2021.12.011

IEEE
Luis C. Dias, Joana Dias, Tiago Ventura, Humberto Rocha, Brígida Ferreira, Leila Khouri, Maria do Carmo Lopes, "Learning target-based preferences through additive models: An application in radiotherapy treatment planning" in European Journal of Operational Research, 2021. 10.1016/j.ejor.2021.12.011

BIBTEX
@article{54310, author = {Luis C. Dias and Joana Dias and Tiago Ventura and Humberto Rocha and Brígida Ferreira and Leila Khouri and Maria do Carmo Lopes}, title = {Learning target-based preferences through additive models: An application in radiotherapy treatment planning}, journal = {European Journal of Operational Research}, year = 2021, }