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Here the Handbook of Abstracts Handbook of the 4th World Congress and School on Universal Logic March 29 { April 07, 2013 Rio de Janeiro, Brazil UNILOG'2013 www.uni-log.org Edited by Jean-Yves B´eziau,Arthur Buchsbaum and Alexandre Costa-Leite Revised by Alvaro Altair Contents 1 Organizers of UNILOG'13 5 1.1 Scientific Committee . .5 1.2 Organizing Committee . .5 1.3 Supporting Organizers . .6 2 Aim of the event 6 3 4th World School on Universal Logic 8 3.1 Aim of the School . .8 3.2 Tutorials . .9 3.2.1 Why Study Logic? . .9 3.2.2 How to get your Logic Article or Book published in English9 3.2.3 Non-Deterministic Semantics . 10 3.2.4 Logic for the Blind as a Stimulus for the Design of Inno- vative Teaching Materials . 13 3.2.5 Hybrid Logics . 16 3.2.6 Psychology of Reasoning . 17 3.2.7 Truth-Values . 18 3.2.8 The Origin of Indian Logic and Indian Syllogism . 23 3.2.9 Logical Forms . 24 3.2.10 An Introduction to Arabic Logic . 25 3.2.11 Quantum Cognition . 27 3.2.12 Towards a General Theory of Classifications . 28 3.2.13 Connecting Logics . 30 3.2.14 Relativity of Mathematical Concepts . 32 3.2.15 Undecidability and Incompleteness are Everywhere . 33 3.2.16 Logic, Algebra and Implication . 33 3.2.17 Hypersequents and Applications . 35 3.2.18 Introduction to Modern Mathematics . 36 3.2.19 Erotetic Logics . 37 3.2.20 History of Paraconsistent Logic . 38 3.2.21 Institutions . 41 3.2.22 Description Logics . 42 3.2.23 Ideospheres . 42 3.2.24 Mathematical Fuzzy Logic . 43 3.2.25 Logics of Plurality . 45 3.2.26 Graded Consequence . 47 3.2.27 The Notions of Empathy and Transcendence in Quine's Philosophical System . 51 3.2.28 Logic, Inquiry, and Discovery: Peirce's vision of Logic . 52 3.2.29 Graph calculi for relational reasoning . 54 2 4 4th World Congress on Universal Logic 55 4.1 Invited Keynote Speakers . 55 4.1.1 Irving H. Anellis . 55 4.1.2 Arnon Avron . 56 4.1.3 Gianluigi Bellin . 57 4.1.4 Ot´avioBueno . 57 4.1.5 Hans Burkhardt . 58 4.1.6 Manuela Busaniche . 59 4.1.7 Carlos Caleiro . 60 4.1.8 Roberto Casati . 61 4.1.9 Roberto Marcondes Cesar Jr. 62 4.1.10 Agata Ciabattoni . 62 4.1.11 Bob Coecke . 62 4.1.12 Simon Colton . 63 4.1.13 Newton C. A. da Costa . 64 4.1.14 Dennis Dieks . 65 4.1.15 Itala Maria Loffredo D'Ottaviano . 66 4.1.16 J. Michael Dunn . 66 4.1.17 Hector Freytes . 67 4.1.18 Andr´eFuhrmann . 68 4.1.19 Antony Galton . 68 4.1.20 Jonathan Ginzburg . 69 4.1.21 Edward Hermann Haeusler . 69 4.1.22 Yuri Gurevich . 70 4.1.23 Beata Konikowska . 71 4.1.24 Arnold Koslow . 72 4.1.25 Tamar Lando . 72 4.1.26 Vincenzo Marra . 73 4.1.27 Daniele Mundici . 74 4.1.28 Sara Negri . 74 4.1.29 Hiroakira Ono . 75 4.1.30 Stephen Read . 75 4.1.31 Giovanni Sambin . 76 4.1.32 Jonathan Seldin . 77 4.1.33 Gila Sher . 77 4.1.34 Sun-Joo Shin . 78 4.1.35 Barbara Tversky . 79 4.1.36 Safak Ural . 79 4.1.37 Luca Vigan`o . 79 4.1.38 Heinrich Wansing . 81 4.1.39 Andrzej Wi´sniewski . 81 4.1.40 Edward N. Zalta . 83 4.1.41 Secret Speaker . 83 4.2 Workshops . 84 4.2.1 Scope of Logic through History What is/was logic? His- torical Perspectives . 84 3 4.2.2 Logic and Metaphysics . 88 4.2.3 Many-Valued Logics . 94 4.2.4 Between First and Second-Order Logic . 110 4.2.5 Generalizing Truth-Functionality - GeTFun 1.0 . 115 4.2.6 Non-Classical Mathematics . 135 4.2.7 Intuitionistic Modal Logic (IMLA 2013) . 144 4.2.8 SHAPES 2.0 { The Shape of Things . 148 4.2.9 Abstract Proof Theory . 157 4.2.10 Relevant Logics . 165 4.2.11 Thinking and Rationality . 170 4.2.12 Medieval Logic . 179 4.2.13 Logical Quantum Structures . 185 4.2.14 Logic and Linguistics . 195 4.2.15 Universal Logic and Artificial Intelligence . 207 4.3 Contest { Scope of Logic Theorems . 210 4.4 Call for Papers for Contributing Speakers . 219 4.5 Contributed Talks . 222 4.5.1 Universal . 222 4.5.2 Combination . 228 4.5.3 Modal . 236 4.5.4 Empirical . 246 4.5.5 Paradoxes . 250 4.5.6 Tools . 258 4.5.7 Philosophy . 292 4.5.8 Quantifiers . 301 4.5.9 Class . 307 4.5.10 History . 320 4.5.11 Algebra and Category Theory . 333 5 Book Exhibition 347 6 Sponsors and Partners 349 4 1 Organizers of UNILOG'13 1.1 Scientific Committee • Arnon Avron, University of Tel-Aviv, Israel • Joham van Benthem, University of Amsterdam Stanford University, The Netherlands and USA • Ross Brady, La Trobe University, Melbourne, Australia • Carlos Caleiro, IST, Lisbon, Portugal • Walter Carnielli, UNICAMP, Campinas, Brazil • Michael Dunn, School of Informatics, Indiana USA • Dov Gabbay, King's College, London, UK • Huacan He, Northwestern PolytechnicalUniversity, Xi'an, China • Gerhard Jaeger, University of Bern, Switzerland • Arnold Koslow, City University of New York, United States • Istvan Nemeti, Hungarian Academy of Sciences, Hungary • Vladimir Vasyukov, Academy of Sciences, Moscow, Russia • Heinrich Wansing, Dresden University of Technology, Germany 1.2 Organizing Committee • Jean-Yves B´eziau(Chair), UFRJ-CNPq, Rio de Janeiro, Brazil • Oswaldo Chateaubriand, PUC-RJ, Rio de Janeiro, Brazil • Alexandre Costa-Leite, University of Brasilia, Brazil • Francisco Antonio Doria, Federal University of Rio de Janeir, Brazil • Itala Maria Loffredo D'Ottaviano, President of the Brazilian Logic Society • Katarzyna Gan-Krzywoszynska, Jagellionan University, Krak´ow,Poland • Edward Hermann Haeusler, PUC-RJ, Rio de Janeiro, Brazil • Jo~aoRicardo Moderno, President of the Brazilian Academy of Philosophy • Mario Benevides, UFRJ, Rio de Janeiro, Brazil • Raja Natarajan, Tata Institute of Fundamental Research, Mumbai, India • Claudia Passos, UFRJ, Rio de Janeiro, Brazil 5 • Alexandre Rademaker, Getulio Vargas Foundation, Rio de Janeiro, Brazil • Marcos Silva, UFC, Fortaleza, Brazil • Miray Yazgan, Istanbul University, Turkey 1.3 Supporting Organizers • Alexandre Garcia, IME, Rio de Janeiro, Brazil. • Alvaro´ Altair - Federal University of Santa Catarina, Brazil • Arthur Buchsbaum - Federal University of Santa Catarina, Brazil • Catherine Chantilly - Brazilian Academy of Philosophy, Brazil • Edson Bezerra - Federal University of Rio de Janeiro, Brazil • F´abioSalgado de Carvalho - University of Brasilia, Brazil • Manuel Doria - Universidade Federal do Rio de Janeiro, Brazil • Yaakoov Israel - BeitMarketing, Rio de Janeiro, Brazil • Przemyslaw Krzywoszynski - Universizy Adam Mickiewicz, Pozan, Poland • Manuel Mouteira - Federal University of Rio de Janeiro, Brazil • Valeria de Paiva - University of Birmingham, UK • Luiz Carlos Pereira - PUC, Rio de Janeiro, Brazil 2 Aim of the event In the same way that universal algebra is a general theory of algebraic structures, universal logic is a general theory of logical structures. During the 20th century, numerous logics have been created: intuitionistic logic, deontic logic, many- valued logic, relevant logic, linear logic, non monotonic logic, etc. Universal logic is not a new logic, it is a way of unifying this multiplicity of logics by developing general tools and concepts that can be applied to all logics. One aim of universal logic is to determine the domain of validity of such and such metatheorem (e.g. the completeness theorem) and to give general formulations of metatheorems. This is very useful for applications and helps to make the distinction between what is really essential to a particular logic and what is not, and thus gives a better understanding of this particular logic. Universal logic can also be seen as a toolkit for producing a specific logic required for a given situation, e.g. a paraconsistent deontic temporal logic. This is the fourth edition of a world event dedicated to universal logic, af- ter very successful editions in Switzerland (2005), China (2007) and Portugal 6 (2010). This event is a combination of a school and a congress. The school of- fers tutorials on a wide range of subjects. The congress will follow with invited talks and contributed talks organized in many workshops. There will also be a contest. This event is intended to be a major event in logic, providing a platform for future research guidelines. Such an event is of interest for all people dealing with logic in one way or another: pure logicians, mathematicians, computer scientists, AI researchers, linguists, psychologists, philosophers, etc. The whole event will happen at the feet of the Sugar Loaf in Rio de Janeiro, Brazil, known as The Wonder City. UNILOG'2013: A logical way of living! 7 3 4th World School on Universal Logic 3.1 Aim of the School This school is on universal logic. Basically this means that tutorials will present general techniques useful for a comprehensive study of the numerous existing systems of logic and useful also for building and developing new ones. For PhD students, postdoctoral students and young researchers interested in logic, artificial intelligence, mathematics, philosophy, linguistics and related fields, this will be a unique opportunity to get a solid background for their future researches. The school is intended to complement some very successful interdisciplinary summer schools which have been organized in Europe and the USA in recent years: The ESSLLI (European Summer School on Logic, Language and Informa- tion).
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