2 research outputs found

    Advances and Applications of Dezert-Smarandache Theory (DSmT) for Information Fusion (Collected Works), Vol. 4

    Get PDF
    The fourth volume on Advances and Applications of Dezert-Smarandache Theory (DSmT) for information fusion collects theoretical and applied contributions of researchers working in different fields of applications and in mathematics. The contributions (see List of Articles published in this book, at the end of the volume) have been published or presented after disseminating the third volume (2009, http://fs.unm.edu/DSmT-book3.pdf) in international conferences, seminars, workshops and journals. First Part of this book presents the theoretical advancement of DSmT, dealing with Belief functions, conditioning and deconditioning, Analytic Hierarchy Process, Decision Making, Multi-Criteria, evidence theory, combination rule, evidence distance, conflicting belief, sources of evidences with different importance and reliabilities, importance of sources, pignistic probability transformation, Qualitative reasoning under uncertainty, Imprecise belief structures, 2-Tuple linguistic label, Electre Tri Method, hierarchical proportional redistribution, basic belief assignment, subjective probability measure, Smarandache codification, neutrosophic logic, Evidence theory, outranking methods, Dempster-Shafer Theory, Bayes fusion rule, frequentist probability, mean square error, controlling factor, optimal assignment solution, data association, Transferable Belief Model, and others. More applications of DSmT have emerged in the past years since the apparition of the third book of DSmT 2009. Subsequently, the second part of this volume is about applications of DSmT in correlation with Electronic Support Measures, belief function, sensor networks, Ground Moving Target and Multiple target tracking, Vehicle-Born Improvised Explosive Device, Belief Interacting Multiple Model filter, seismic and acoustic sensor, Support Vector Machines, Alarm classification, ability of human visual system, Uncertainty Representation and Reasoning Evaluation Framework, Threat Assessment, Handwritten Signature Verification, Automatic Aircraft Recognition, Dynamic Data-Driven Application System, adjustment of secure communication trust analysis, and so on. Finally, the third part presents a List of References related with DSmT published or presented along the years since its inception in 2004, chronologically ordered

    Hierarchical outranking methods for multi-criteria decision aiding

    Get PDF
    Els m猫todes d鈥橝jut a la Decisi贸 Multi-Criteri assisteixen en la pressa de decisions implicant m煤ltiples criteris conflictius. Existeixen dos enfocaments principals per resoldre aquest tipus de problemes: els m猫todes basats en utilitat i d鈥檕utranking, cadascun amb les seves fortaleses i debilitats. Els m猫todes outranking estan basats en models d鈥檈lecci贸 social combinats amb t猫cniques d鈥檌ntel路lig猫ncia artificial (com gesti贸 de dades categ貌riques o d鈥檌ncertesa). Son eines per una avaluaci贸 i comparaci贸 realista d鈥檃lternatives, basant-se en les necessitats i coneixements del prenedor de la decisi贸. Una de les debilitats dels m猫todes outranking 茅s la no consideraci贸 de jerarquies de criteris, que permeten una organitzaci贸 natural del problema, distingint diferents nivells de generalitat que modelen les relacions taxon貌miques impl铆cites entre criteris. En aquesta tesi ens enfoquem en el desenvolupament d鈥檈ines d鈥檕utranking jer脿rquiques i la seva aplicaci贸 en casos d鈥檈studi reals per problemes de classificaci贸 i r脿nquing.Los m茅todos de Ayuda a la Decisi贸n Multi-Criterio asisten en la toma de decisiones involucrando m煤ltiples criterios conflictivos. Existen dos enfoques principales para resolver 茅ste tipo de problemas: los m茅todos basados en utilidad y de outranking, cada uno con sus fortalezas y debilidades. Los m茅todos outranking est谩n basados en modelos de elecci贸n social combinados con t茅cnicas de Inteligencia Artificial (como gesti贸n de datos categ贸ricos o de incertidumbre). Son herramientas para una evaluaci贸n y comparaci贸n realista de alternativas, bas谩ndose en las necesidades y conocimientos del tomador de decisi贸n. Una de las debilidades de los m茅todos outranking es la no consideraci贸n de jerarqu铆as de criterios, que permiten una organizaci贸n natural del problema, distinguiendo distintos niveles de generalidad que modelan las relaciones taxon贸micas impl铆citas entre criterios. En 茅sta tesis nos enfocamos en el desarrollo de herramientas de outranking jer谩rquicas y su aplicaci贸n en casos de estudio reales para problemas de clasificaci贸n y ranking.Multi-Criteria Decision Aiding (MCDA) methods support complex decision making involving multiple and conflictive criteria. MCDA distinguishes two main approaches to deal with this type of problems: utility-based and outranking methods, each with its own strengths and weaknesses. Outranking methods are based on social choice models combined with Artificial Intelligence techniques (such as the management of categorical data or uncertainty). They are recognized as providing tools for a realistic assessment and comparison of a set of alternatives, based on the decision maker鈥檚 knowledge and needs. One of the main weaknesses of the outranking methods is the lack of consideration of hierarchies of criteria, which enables the decision maker to naturally organize the problem, distinguishing different levels of generality that model the implicit taxonomical relations between the criteria. In this thesis we focus on developing hierarchical outranking tools and their application to real-world case studies for ranking and sorting problems
    corecore