| DC Field | Value | Language |
| dc.contributor.author | MOKADEM, ADel ABdelkader | - |
| dc.date.accessioned | 2026-06-30T07:19:09Z | - |
| dc.date.available | 2026-06-30T07:19:09Z | - |
| dc.date.issued | 2025 | - |
| dc.identifier.uri | https://repository.esi-sba.dz/jspui/handle/123456789/873 | - |
| dc.description | Supervisor : Dr. Nassima DIF /Co-supervisor Pr. Sidi Mohammed BENSLIMANE / Co-supervisor
Pr. Marie-El´eonore KESSACI / Co-supervisor: Dr. Julie JACQUES | en_US |
| dc.description.abstract | Multi-label classification (MLC) has emerged as one of the most compelling and challenging
paradigms in machine learning, reflecting the inherently complex nature of
real-world data where instances naturally belong to multiple labels simultaneously.
While this paradigm offers a richer representation of complex data, it also introduces
significant challenges, including correlations between labels, high dimensionality,
severe class imbalance, and the exponential growth of possible label combinations.
These challenges have led researchers to reconceptualize multi-label classification as a
combinatorial optimization problem, motivating the use of multi-objective optimization
and metaheuristic approaches, which can efficiently navigate large search spaces
and generate diverse sets of high-quality trade-off solutions. However, despite these
advances, a persistent limitation lies in the lack of explainability, as most optimizationdriven
methods prioritize predictive performance while offering little interpretability.
In this work, we introduce MOEA/D-AM, a novel multi-objective evolutionary algorithm
that addresses this critical gap by integrating rule-based mechanisms within the
decomposition-based MOEA/D framework. The proposed algorithm optimizes multiple
conflicting objectives while generating human-readable decision rules that provide
clear insights into the classification process for both single-label and multi-label scenarios.
Through comprehensive experimental evaluation on benchmark datasets, we
demonstrate that our algorithm achieves competitive predictive performance while
providing the explainability needed for deployment in domains where understanding
the reasoning behind decisions is crucial.***
La classification multi-label (MLC) est devenue l’un des paradigmes les plus captivants
et difficiles de l’apprentissage automatique, refl´etant la nature intrins`equement
complexe des donn´ees du monde r´eel o`u les instances appartiennent naturellement
`a plusieurs labels simultan´ement. Bien que ce paradigme offre une repr´esentation
plus riche des donn´ees complexes, il introduit ´egalement des d´efis consid´erables, notamment
les corr´elations entre labels, la haute dimensionnalit´e, le d´es´equilibre s´ev`ere
des classes, et la croissance exponentielle des combinaisons possibles de labels. Ces
d´efis ont amen´e les chercheurs `a reconceptualiser la classification multi-´etiquettes
comme un probl`eme d’optimisation combinatoire, motivant l’utilisation d’approches
d’optimisation multi-objectifs et m´etaheuristiques, qui peuvent naviguer efficacement
dans de vastes espaces de recherche et g´en´erer des ensembles diversifi´es de solutions
de compromis de haute qualit´e. Cependant, malgr´e ces avanc´ees, une limitation
persistante r´eside dans le manque d’explicabilit´e, car la plupart des m´ethodes
bas´ees sur l’optimisation privil´egient les performances pr´edictives tout en offrant peu
d’interpr´etabilit´e. Dans ce travail, nous introduisons MOEA/D-AM, un nouvel algorithme
´evolutionnaire multi-objectifs qui aborde cette lacune critique en int´egrant
des m´ecanismes bas´es sur les r`egles dans le cadre de la d´ecomposition MOEA/D.
L’algorithme propos´e optimise plusieurs objectifs conflictuels tout en g´en´erant des
r`egles de d´ecision lisibles par l’homme qui fournissent des perspectives claires sur le
processus de classification pour les sc´enarios de classification mono-label et multilabel.
Grˆace `a une ´evaluation exp´erimentale approfondie sur des jeux de donn´ees de
r´ef´erence, nous d´emontrons que notre algorithme atteint des performances pr´edictives
comp´etitives tout en fournissant l’explicabilit´e n´ecessaire pour le d´eploiement dans
des domaines o`u la compr´ehension du raisonnement derri`ere les d´ecisions est cruciale. | en_US |
| dc.language.iso | en | en_US |
| dc.subject | Multi-label Classification | en_US |
| dc.subject | Combinatorial Optimization | en_US |
| dc.subject | Multi-objective Optimization | en_US |
| dc.subject | Metaheuristics | en_US |
| dc.subject | Evolutionary Algorithms | en_US |
| dc.subject | Ant Colony Optimization | en_US |
| dc.title | Development of a Multi-objective Optimization Algorithm for Interpretable Rule Induction in Multi-label Classification | en_US |
| dc.type | Thesis | en_US |
| Appears in Collections: | Ingenieur
|