The Design, Implementation and Application of Z-number Linguistic Model
Metadatos
Mostrar el registro completo del ítemAutor
Li, YangxueEditorial
Universidad de Granada
Director
Morente Molinera, Juan AntonioDepartamento
Universidad de Granada. Programa de Doctorado en Tecnologías de la Información y ComunicaciónFecha
2025Fecha lectura
2025-06-25Referencia bibliográfica
Li, Yangxue. The Design, Implementation and Application of Z-number Linguistic Model. Granada: Universidad de Granada, 2025. [https://hdl.handle.net/10481/108295]
Patrocinador
Tesis Univ. Granada.; China Scholarship Council (CSC); National Natural Science Foundation of China (#71910107002); Grant PID2022-139297OB-I00 funded by MICIU/AEI/10.13039/501100011033 and by ERDF/EU; Part of the project C-ING-165-UGR23, co-funded by the Regional Ministry of University, Research and Innovation and by the European Union under the Andalusia ERDF Programme 2021-2027; Project B-TIC-590-UGR20 co-funded by the Programa Operativo FEDER 2014-2020 and the Regional Ministry of Economy, Knowledge, Enterprise and Universities (CECEU) of Andalusia; Project PID2019-103880RB-I00 funded by MCIN / AEI / 10.13039 /501100011033 and by the Andalusian goverment through project P20 00673Resumen
Decision-making in the real world is often complicated by the uncertainty of information and its
partial reliability. Not only might the exact value of a quantity be vague, but our confidence in that
value can also be limited. Traditional approaches, such as probability theory and fuzzy set theory,
each have their own limitations when handling the partial reliability of information. To overcome
these limitations, Zadeh introduced Z-numbers, defined as ordered pairs Z = ( ˜ A, ˜B ), integrating a
fuzzy quantity with its associated reliability measure.
This thesis builds on the concept of Z-numbers to develop a comprehensive Z-number linguistic
modeling framework, explicitly addressing the uncertainty in both value and reliability. The main
contributions include:
(1) Z-number linguistic model: A formal model is established for representing linguistic information
(such as expert statements or sensor observations) as Z-number linguistic terms. This
structured representation simultaneously encodes fuzzy values and their reliability, laying theoretical
groundwork for robust reasoning under uncertainty.
(2) Z-number-valued rule-based classification system (ZRBCS): Extending traditional fuzzy rulebased
classification systems, ZRBCS incorporates Z-number conditions into rules. Unlike conventional
fuzzy systems, each rule condition explicitly encodes uncertainty and reliability, enabling
nuanced inference and improving classification performance by utilizing negative samples to determine
reliability and adjust fuzzy partitions.
(3) Z-number-valued rule-based decision tree (ZRDT): Building on fuzzy rule-based decision
trees, ZRDT integrates Z-numbers into the decision-tree framework. Information gain replaces fuzzy
confidence for feature selection, and negative samples guide the refinement of fuzzy numbers for
better data fitting. Experimental comparisons demonstrate that ZRDT achieves higher classification
accuracy and produces a more compact decision tree than standard algorithms such as FRDT,
PUBLIC, C4.5, and AdaBoost.NC.
(4) Z-number generation model: A novel nonlinear model, Maximum Expected Minimum Entropy
(MEME), is proposed to generate Z-numbers directly from multiple probability distributions,
eliminating reliance on expert input. Further, MEME is integrated into a Z-valuation rule-based
(ZVRB) classification system, significantly enhancing decision-making performance under uncertainty.
Experimental validation confirms that the ZVRB system outperforms classical classifiers
and existing rule-based methods.
(5) Optimization via FURIA: The Fuzzy Unordered Rule Induction Algorithm (FURIA) is integrated
as an optimization tool to refine the proposed Z-number models. FURIA improves accuracy
and interpretability by dynamically adjusting membership functions, optimizing rule sets, and selecting
predictive features. This demonstrates that the developed framework can adaptively learn
from data, significantly enhancing overall performance. Collectively, these contributions advance uncertainty modeling by explicitly managing both
value uncertainty and information reliability, providing a robust and nuanced toolset for real-world
decision-making beyond existing probabilistic and fuzzy frameworks.





