Uncertain cost consensus modeling regarding individual behavior constraints and its application
Metadatos
Mostrar el registro completo del ítemAutor
Xu, XiaoxiaEditorial
Universidad de Granada
Departamento
Universidad de Granada. Programa de Doctorado en Tecnologías de la Información y la ComunicaciónFecha
2023Fecha lectura
2023-02-21Referencia bibliográfica
Xu, Xiaoxia. Uncertain cost consensus modeling regarding individual behavior constraints and its application. Granada: Universidad de Granada, 2023. [https://hdl.handle.net/10481/80352]
Patrocinador
Tesis Univ. Granada.Resumen
Group decision-making (GDM) mainly solves unstructured decision problems, involving subjective
participation of various experts. In general, when solving GDM problems, decision-makers (DMs)
eventually form a clear support or objection (i.e., consensus) via multiple rounds of negotiations
with consensus cost. However, factors a ecting the consensus reaching process (CRP) normally
include the DMs' preference structures, decision environment, the in
uence of particular decision
roles and etc., making the GDM full of uncertainty and unable to accurately predict the outcome in
advance. Thus, a moderator on behalf of the collective interest is often introduced to increase the
speed and e ciency of the GDM. Inspired by the minimum cost consensus (MCC) in the literature,
this thesis aims to construct a series of new consensus optimization models to address real-life GDM
problems from two perspectives of either minimizing the moderator's total cost or maximizing the
individual DM's total revenue. In building these new models, we also incorporate diverse behavioral
constraints, such as non-cooperation, trade-o of interest and equity or unbalanced adjustment
willing. Speci cally, we conduct threefold discussions as follows:
(1) Introduce uncertainty theory into the optimal consensus modeling to address unreliable
results yielded when the reliability of decisions is determined only by experts due to the absence of
su cient historical data. To do that, we use uncertainty distribution and belief degree as a whole to
t individual preferences, and further discuss ve scenarios of uncertain chance-constrained MCC
models (MCCMs) from the angles of the moderator, individual DMs and non-cooperators. Besides,
we provide consensus reaching conditions and the analytic formulae of the minimum total cost
through deductions. Finally, the new models are veri ed as an extension of the traditional crisp
number or interval preference-based MCCMs with the application of carbon quota negotiation.
(2) Extend uncertain MCCMs into the CRP framework by incorporating DM's unbalanced willing
of modifying preference and designing a feedback mechanism on both preferences and weights
due to democratic consensus. To do that, we build two new consensus optimization models based
on the uncertain distance measure: one is to obtain a MCC on account of asymmetric costs, aggregation
function and consensus measure; while the other provides a more
exible way to solve
GDM problems without presetting a consensus level threshold. Moreover, binary variables are used
to reduce the calculation complexity resulted from piecewise functions in the new multi-coe cient
goal programming models and the feasibility of the new proposal is veri ed by illustrative examples.
(3) Inspired by the maximum compensation consensus models transformed from the MCCMs,
we build several new consensus optimization models to obtain
exible (e.g., optimal or fair) carbon
quota allocation schemes within a closed-loop trading system. To solve these new models, a
relaxation method based on the PSO algorithm is proposed. Moreover, since the inability to perform
real-life GDM usually stems from con
icts of interest based on the DMs' mutual competition,
we further suggest two strategies to address the unfairness. Numerical results show that su cient
interactions among the DMs are of great signi cance in achieving fairness within a trading system.