Publications of the ERIC lab
AIGLE

(12) Production(s) of ROLLAND A.



|
|
Using set functions for multiple classifiers combination
Author(s): ROLLAND A., RICO F.
Proceedings: Conference: DA2PL'12 (, FR, 2012-11-15)
Published: DA2PL 2012, actes, vol. (2012) p.57-62
Abstract: In machine learning, the multiple classifiers aggregation
problems consist in using multiple classifiers to enhance the quality
of a single classifier. Simple classifiers as mean or majority rules
are already used, but the aggregation methods used in voting theory
or multi-criteria decision making should increase the quality of the
obtained results. Meanwhile, these methods should lead to better interpretable
results for a human decision-maker. We present here the
results of a first experiment based on the use of Choquet integral, decisive
sets and rough sets based methods on four different datasets.
---------
|

|
|
Elicitation of a 2-additive bi-capacity through cardinal
information on trinary actions
Author(s): Mayag Brice, AH-PINE J., ROLLAND A.
Proceedings: Conference: International Conference on Information Processing and Management of Uncertainty in Knowledge-Based (Catania, IT, 2012-07-09)
Published: IPMU 2012 (proceedings), vol. (2012) p.?
Abstract: In the context of MultiCriteria Decision Aid, we present new properties of a
2-additive bi-capacity by using a bipolar M¨obius transform. We use these properties in the
identification of a 2-additive bi-capacity when we represent a cardinal information by a
Choquet integral with respect to a 2-additive bi-capacity.
---------
|

|
|
Reference-based Preferences Aggregation Procedures in Multicriteria Decision Making 
Author(s): ROLLAND A.
(Article) Published:
European Journal of Operational Research, vol. 225 (2013) p.479-486
DOI: 10.1016/j.ejor.2012.10.013
Abstract: This paper aims at introducing and investigating a new family
of merely qualitative models for multicriteria decision making. Such models do not require any numerical
representation. Within this family, we will focus on decision rules
using reference levels in order to help comparing several alternatives. We will investigate both the descriptive potential of such rules and their axiomatic foundations.
After recalling the descriptive and prescriptive limitations of merely ordinal rules that do not use reference points, we will introduce a new axiom requiring that the Decision Maker's preference between two alternatives depends on the respective positions of their consequences relatively to reference levels. Under this assumption we will determine the only possible form for the decision rule and characterize some particular instances of this rule under transitivity constraints. Our results show that introducing reference points overcomes the usual limitations of purely ordinal aggregation methods, by moving the application point of Arrow's theorem.
---------
|


|
|
Aide à la décision multicritère et
apprentissage automatique
pour la classification
Author(s): ROLLAND A.
Conference: Atelier AIDE, Conférence EGC (Bordeaux, FR, 2012-05-30)
Abstract: Les méthodes d'aide multicritère à la décision pour la problématique du tri d'une part, et les méthodes d'apprentissage automatique d'autre part poursuivent le même objectif : permettre d'affecter des objets à des catégories prédéfinies, ordonnées ou non. Cependant, les différences existantes entre les deux domaines d'application font que jusqu'à aujourd'hui ce deux domaines ont eu peu d'interactions. Il nous semble cependant qu'il y a la matière à exploration. Nous proposons donc de présenter quelques méthodes et paradigmes pour la problématique du tri en analyse multicritère avant de proposer quelques pistes pour des applications croisées en apprentissage automatique et en aide à la décision
---------
|