Results for 'Bayesian nets'

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  1. Bayesian Nets and Causality: Philosophical and Computational Foundations.Jon Williamson - 2004 - Oxford, England: Oxford University Press.
    Bayesian nets are widely used in artificial intelligence as a calculus for causal reasoning, enabling machines to make predictions, perform diagnoses, take decisions and even to discover causal relationships. This book, aimed at researchers and graduate students in computer science, mathematics and philosophy, brings together two important research topics: how to automate reasoning in artificial intelligence, and the nature of causality and probability in philosophy.
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  2. Bayesian nets and causality.Jon Williamson - manuscript
    How should we reason with causal relationships? Much recent work on this question has been devoted to the theses (i) that Bayesian nets provide a calculus for causal reasoning and (ii) that we can learn causal relationships by the automated learning of Bayesian nets from observational data. The aim of this book is to..
     
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  3.  22
    Objective Bayesian Nets from Consistent Datasets.Jürgen Landes & Jon Williamson - unknown
    This paper addresses the problem of finding a Bayesian net representation of the probability function that agrees with the distributions of multiple consistent datasets and otherwise has maximum entropy. We give a general algorithm which is significantly more efficient than the standard brute-force approach. Furthermore, we show that in a wide range of cases such a Bayesian net can be obtained without solving any optimisation problem.
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  4.  70
    Bayesian Nets Are All There Is To Causal Dependence.Wolfgang Spohn - unknown
    The paper displays the similarity between the theory of probabilistic causation developed by Glymour et al. since 1983 and mine developed since 1976: the core of both is that causal graphs are Bayesian nets. The similarity extends to the treatment of actions or interventions in the two theories. But there is also a crucial difference. Glymour et al. take causal dependencies as primitive and argue them to behave like Bayesian nets under wide circumstances. By contrast, I (...)
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  5.  7
    Objective Bayesian nets for integrating consistent datasets.Jürgen Landes & Jon Williamson - 2022 - Journal of Artificial Intelligence Research 74:393-458.
    This paper addresses a data integration problem: given several mutually consistent datasets each of which measures a subset of the variables of interest, how can one construct a probabilistic model that fits the data and gives reasonable answers to questions which are under-determined by the data? Here we show how to obtain a Bayesian network model which represents the unique probability function that agrees with the probability distributions measured by the datasets and otherwise has maximum entropy. We provide a (...)
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  6.  84
    Objective bayesian nets.Jon Williamson - manuscript
    I present a formalism that combines two methodologies: objective Bayesianism and Bayesian nets. According to objective Bayesianism, an agent’s degrees of belief (i) ought to satisfy the axioms of probability, (ii) ought to satisfy constraints imposed by background knowledge, and (iii) should otherwise be as non-committal as possible (i.e. have maximum entropy). Bayesian nets offer an efficient way of representing and updating probability functions. An objective Bayesian net is a Bayesian net representation of the (...)
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  7.  36
    Objective Bayesian Nets for Systems Modelling and Prognosis in Breast Cancer.Sylvia Nagl - unknown
    Cancer treatment decisions should be based on all available evidence. But this evidence is complex and varied: it includes not only the patient’s symptoms and expert knowledge of the relevant causal processes, but also clinical databases relating to past patients, databases of observations made at the molecular level, and evidence encapsulated in scientific papers and medical informatics systems. Objective Bayesian nets offer a principled path to knowledge integration, and we show in this chapter how they can be applied (...)
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  8. Objective Bayesian nets for integrating cancer knowledge: a systems biology approach.Sylvia Nagl, Matthew Williams, Nadjet El-Mehidi, Vivek Patkar & Jon Williamson - unknown
    According to objective Bayesianism, an agent’s degrees of belief should be determined by a probability function, out of all those that satisfy constraints imposed by background knowledge, that maximises entropy. A Bayesian net offers a way of efficiently representing a probability function and efficiently drawing inferences from that function. An objective Bayesian net is a Bayesian net representation of the maximum entropy probability function. In this paper we apply the machinery of objective Bayesian nets to (...)
     
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  9.  42
    Objective bayesian nets for systems modelling and prognosis in breast cancer.Jon Williamson - manuscript
    Cancer treatment decisions should be based on all available evidence. But this evidence is complex and varied: it includes not only the patient’s symptoms and expert knowledge of the relevant causal processes, but also clinical databases relating to past patients, databases of observations made at the molecular level, and evidence encapsulated in scientific papers and medical informatics systems. Objective Bayesian nets offer a principled path to knowledge integration, and we show in this chapter how they can be applied (...)
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  10. Recursive Bayesian Nets for Prediction, Explanation and Control in Cancer Science.Jon Williamson - unknown
    this paper we argue that the formalism can also be applied to modelling the hierarchical structure of physical mechanisms. The resulting network contains quantitative information about probabilities, as well as qualitative information about mechanistic structure and causal relations. Since information about probabilities, mechanisms and causal relations are vital for prediction, explanation and control respectively, a recursive Bayesian net can be applied to all these tasks. We show how a Recursive Bayesian Net can be used to model mechanisms in (...)
     
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  11. Scientific Theories as Bayesian Nets: Structure and Evidence Sensitivity.Patrick Grim, Frank Seidl, Calum McNamara, Hinton E. Rago, Isabell N. Astor, Caroline Diaso & Peter Ryner - 2022 - Philosophy of Science 89 (1):42-69.
    We model scientific theories as Bayesian networks. Nodes carry credences and function as abstract representations of propositions within the structure. Directed links carry conditional probabilities and represent connections between those propositions. Updating is Bayesian across the network as a whole. The impact of evidence at one point within a scientific theory can have a very different impact on the network than does evidence of the same strength at a different point. A Bayesian model allows us to envisage (...)
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  12.  68
    Combining argumentation and bayesian nets for breast cancer prognosis.Matt Williams & Jon Williamson - 2006 - Journal of Logic, Language and Information 15 (1-2):155-178.
    We present a new framework for combining logic with probability, and demonstrate the application of this framework to breast cancer prognosis. Background knowledge concerning breast cancer prognosis is represented using logical arguments. This background knowledge and a database are used to build a Bayesian net that captures the probabilistic relationships amongst the variables. Causal hypotheses gleaned from the Bayesian net in turn generate new arguments. The Bayesian net can be queried to help decide when one argument attacks (...)
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  13.  74
    Review: Bayesian Nets and Causality: Philosophical and Computational Foundations. [REVIEW]S. Choi - 2006 - Mind 115 (458):502-506.
  14.  32
    Jon Williamson. Bayesian nets and causality: Philosophical and computational foundations.Kevin B. Korb - 2007 - Philosophia Mathematica 15 (3):389-396.
    Bayesian networks are computer programs which represent probabilitistic relationships graphically as directed acyclic graphs, and which can use those graphs to reason probabilistically , often at relatively low computational cost. Almost every expert system in the past tried to support probabilistic reasoning, but because of the computational difficulties they took approximating short-cuts, such as those afforded by MYCIN's certainty factors. That all changed with the publication of Judea Pearl's Probabilistic Reasoning in Intelligent Systems, in 1988, which synthesized a decade (...)
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  15.  40
    Jon Williamson bayesian nets and causality.Clark Glymour - 2009 - British Journal for the Philosophy of Science 60 (4):849-855.
  16.  29
    Jon Williamson, bayesian nets and causality: Philosophical and computational foundations. [REVIEW]Bradford McCall - 2008 - Minds and Machines 18 (2):301-302.
  17.  7
    JON WILLIAMSON Bayesian Nets and Causality. [REVIEW]Clark Glymour - 2009 - British Journal for the Philosophy of Science 60 (4):849-855.
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  18.  25
    Generalized Bayesian Inference Nets Model and Diagnosis of Cardiovascular Diseases.Jiayi Dou, Mingchui Dong & Booma Devi Sekar - 2011 - Journal of Intelligent Systems 20 (3):209-225.
    A generalized Bayesian inference nets model is proposed to aid researchers to construct Bayesian inference nets for various applications. The benefit of such a model is well demonstrated by applying GBINM in constructing a hierarchical Bayesian fuzzy inference nets to diagnose five important types of cardiovascular diseases. The patients' medical records with doctors' confirmed diagnostic results obtained from two hospitals in China are used to design and verify HBFIN. Bayesian theorem is used to (...)
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  19.  65
    Bayes Nets and Rationality.Stephan Hartmann - 2021 - In The Handbook of Rationality. Boston, Massachusetts, USA:
    Bayes nets are a powerful tool for researchers in statistics and artificial intelligence. This chapter demonstrates that they are also of much use for philosophers and psychologists interested in (Bayesian) rationality. To do so, we outline the general methodology of Bayes nets modeling in rationality research and illustrate it with several examples from the philosophy and psychology of reasoning and argumentation. Along the way, we discuss the normative foundations of Bayes nets modeling and address some of (...)
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  20.  9
    Quantifying the uncertainty of a belief net response: Bayesian error-bars for belief net inference.Tim Van Allen, Ajit Singh, Russell Greiner & Peter Hooper - 2008 - Artificial Intelligence 172 (4-5):483-513.
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  21.  78
    Objective bayesian probabilistic logic.Jon Williamson - 2008
    This paper develops connections between objective Bayesian epistemology—which holds that the strengths of an agent’s beliefs should be representable by probabilities, should be calibrated with evidence of empirical probability, and should otherwise be equivocal—and probabilistic logic. After introducing objective Bayesian epistemology over propositional languages, the formalism is extended to handle predicate languages. A rather general probabilistic logic is formulated and then given a natural semantics in terms of objective Bayesian epistemology. The machinery of objective Bayesian (...) and objective credal nets is introduced and this machinery is applied to provide a calculus for probabilistic logic that meshes with the objective Bayesian semantics. (shrink)
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  22.  52
    Models for Prediction, Explanation and Control: Recursive Bayesian Networks.Lorenzo Casini, Phyllis McKay Illari, Federica Russo & Jon Williamson - 2011 - Theoria 26 (1):5-33.
    The Recursive Bayesian Net formalism was originally developed for modelling nested causal relationships. In this paper we argue that the formalism can also be applied to modelling the hierarchical structure of mechanisms. The resulting network contains quantitative information about probabilities, as well as qualitative information about mechanistic structure and causal relations. Since information about probabilities, mechanisms and causal relations is vital for prediction, explanation and control respectively, an RBN can be applied to all these tasks. We show in particular (...)
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  23.  40
    Imprecise Bayesian Networks as Causal Models.David Kinney - 2018 - Information 9 (9):211.
    This article considers the extent to which Bayesian networks with imprecise probabilities, which are used in statistics and computer science for predictive purposes, can be used to represent causal structure. It is argued that the adequacy conditions for causal representation in the precise context—the Causal Markov Condition and Minimality—do not readily translate into the imprecise context. Crucial to this argument is the fact that the independence relation between random variables can be understood in several different ways when the joint (...)
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  24.  69
    Modeling creative abduction Bayesian style.Christian J. Feldbacher-Escamilla & Alexander Gebharter - 2019 - European Journal for Philosophy of Science 9 (1):1-15.
    Schurz (Synthese 164:201–234, 2008) proposed a justification of creative abduction on the basis of the Reichenbachian principle of the common cause. In this paper we take up the idea of combining creative abduction with causal principles and model instances of successful creative abduction within a Bayes net framework. We identify necessary conditions for such inferences and investigate their unificatory power. We also sketch several interesting applications of modeling creative abduction Bayesian style. In particular, we discuss use-novel predictions, confirmation, and (...)
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  25.  58
    Bayesian Networks and Causal Ecumenism.David Kinney - 2020 - Erkenntnis 88 (1):147-172.
    Proponents of various causal exclusion arguments claim that for any given event, there is often a unique level of granularity at which that event is caused. Against these causal exclusion arguments, causal ecumenists argue that the same event or phenomenon can be caused at multiple levels of granularity. This paper argues that the Bayesian network approach to representing the causal structure of target systems is consistent with causal ecumenism. Given the ubiquity of Bayesian networks as a tool for (...)
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  26. Models for prediction, explanation and control: recursive bayesian networks.Jon Williamson - 2011 - Theoria: Revista de Teoría, Historia y Fundamentos de la Ciencia 26 (1):5-33.
    The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested causal relationships. In this paper we argue that the formalism can also be applied to modelling the hierarchical structure of mechanisms. The resulting network contains quantitative information about probabilities, as well as qualitative information about mechanistic structure and causal relations. Since information about probabilities, mechanisms and causal relations is vital for prediction, explanation and control respectively, an RBN can be applied to all these tasks. We show in (...)
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  27. On the Proximity of the Logical and ‘Objective Bayesian’ Interpretations of Probability.Darrell Patrick Rowbottom - 2008 - Erkenntnis 69 (3):335-349.
    In his Bayesian Nets and Causality, Jon Williamson presents an ‘Objective Bayesian’ interpretation of probability, which he endeavours to distance from the logical interpretation yet associate with the subjective interpretation. In doing so, he suggests that the logical interpretation suffers from severe epistemological problems that do not affect his alternative. In this paper, I present a challenge to his analysis. First, I closely examine the relationship between the logical and ‘Objective Bayesian’ views, and show how, and (...)
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  28.  35
    Accuracy, probabilism and Bayesian update in infinite domains.Alexander R. Pruss - 2022 - Synthese 200 (6):1-29.
    Scoring rules measure the accuracy or epistemic utility of a credence assignment. A significant literature uses plausible conditions on scoring rules on finite sample spaces to argue for both probabilism—the doctrine that credences ought to satisfy the axioms of probabilism—and for the optimality of Bayesian update as a response to evidence. I prove a number of formal results regarding scoring rules on infinite sample spaces that impact the extension of these arguments to infinite sample spaces. A common condition in (...)
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  29. Modelling competing legal arguments using Bayesian model comparison and averaging.Martin Neil, Norman Fenton, David Lagnado & Richard David Gill - 2019 - Artificial Intelligence and Law 27 (4):403-430.
    Bayesian models of legal arguments generally aim to produce a single integrated model, combining each of the legal arguments under consideration. This combined approach implicitly assumes that variables and their relationships can be represented without any contradiction or misalignment, and in a way that makes sense with respect to the competing argument narratives. This paper describes a novel approach to compare and ‘average’ Bayesian models of legal arguments that have been built independently and with no attempt to make (...)
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  30. What Is Wrong With Bayes Nets?Nancy Cartwright - 2001 - The Monist 84 (2):242-264.
    Probability is a guide to life partly because it is a guide to causality. Work over the last two decades using Bayes nets supposes that probability is a very sure guide to causality. I think not, and I shall argue that here. Almost all the objections I list are well-known. But I have come to see them in a different light by reflecting again on the original work in this area by Wolfgang Spohn and his recent defense of it (...)
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  31.  11
    A New Visualization for Probabilistic Situations Containing Two Binary Events: The Frequency Net.Karin Binder, Stefan Krauss & Patrick Wiesner - 2020 - Frontiers in Psychology 11:506040.
    In teaching statistics in secondary schools and at university, two visualizations are primarily used when situations with two dichotomous characteristics are represented: 2×2 tables and tree diagrams. Both visualizations can be depicted either with probabilities or with frequencies. Visualizations with frequencies have been shown to help students significantly more in Bayesian reasoning problems than probability visualizations do. Because tree diagrams or double-trees (which are largely unknown in school) are node-branch-structures, these two visualizations (compared to the 2×2 table) can even (...)
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  32.  75
    Combining causal Bayes nets and cellular automata: A hybrid modelling approach to mechanisms.Alexander Gebharter & Daniel Koch - 2021 - British Journal for the Philosophy of Science 72 (3):839-864.
    Causal Bayes nets (CBNs) can be used to model causal relationships up to whole mechanisms. Though modelling mechanisms with CBNs comes with many advantages, CBNs might fail to adequately represent some biological mechanisms because—as Kaiser (2016) pointed out—they have problems with capturing relevant spatial and structural information. In this paper we propose a hybrid approach for modelling mechanisms that combines CBNs and cellular automata. Our approach can incorporate spatial and structural information while, at the same time, it comes with (...)
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  33.  92
    Rational Irrationality: Modeling Climate Change Belief Polarization Using Bayesian Networks.John Cook & Stephan Lewandowsky - 2016 - Topics in Cognitive Science 8 (1):160-179.
    Belief polarization is said to occur when two people respond to the same evidence by updating their beliefs in opposite directions. This response is considered to be “irrational” because it involves contrary updating, a form of belief updating that appears to violate normatively optimal responding, as for example dictated by Bayes' theorem. In light of much evidence that people are capable of normatively optimal behavior, belief polarization presents a puzzling exception. We show that Bayesian networks, or Bayes nets, (...)
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  34.  51
    The punctuated equilibrium of scientific change: a Bayesian network model.Patrick Grim, Frank Seidl, Calum McNamara, Isabell N. Astor & Caroline Diaso - 2022 - Synthese 200 (4):1-25.
    Our scientific theories, like our cognitive structures in general, consist of propositions linked by evidential, explanatory, probabilistic, and logical connections. Those theoretical webs ‘impinge on the world at their edges,’ subject to a continuing barrage of incoming evidence. Our credences in the various elements of those structures change in response to that continuing barrage of evidence, as do the perceived connections between them. Here we model scientific theories as Bayesian nets, with credences at nodes and conditional links between (...)
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  35. Reasons as Causes in Bayesian Epistemology.Clark Glymour & David Danks - 2007 - Journal of Philosophy 104 (9):464-474.
    In everyday matters, as well as in law, we allow that someone’s reasons can be causes of her actions, and often are. That correct reasoning accords with Bayesian principles is now so widely held in philosophy, psychology, computer science and elsewhere that the contrary is beginning to seem obtuse, or at best quaint. And that rational agents should learn about the world from energies striking sensory inputs nerves in people—seems beyond question. Even rats seem to recognize the difference between (...)
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  36. Measuring causal interaction in bayesian networks.Charles Twardy - manuscript
    Artificial Intelligence (AI) and Philosophy of Science share a fundamental problem—understanding causality. Bayesian networks have recently been used by Judea Pearl in a new approach to understanding causality (Pearl, 2000). Part of understanding causality is understanding causal interaction. Bayes nets can represent any degree of causal interaction, and researchers normally try to limit interactions, usually by replacing the full CPT with a noisy-OR function. But we show that noisy-OR and another common model are merely special cases of the (...)
     
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  37.  16
    Mental models, computational explanation and Bayesian cognitive science: Commentary on Knauff and Gazzo Castañeda (2023).Mike Oaksford - 2023 - Thinking and Reasoning 29 (3):371-382.
    Knauff and Gazzo Castañeda (2022) object to using the term “new paradigm” to describe recent developments in the psychology of reasoning. This paper concedes that the Kuhnian term “paradigm” may be queried. What cannot is that the work subsumed under this heading is part of a new, progressive movement that spans the brain and cognitive sciences: Bayesian cognitive science. Sampling algorithms and Bayes nets used to explain biases in JDM can implement the Bayesian new paradigm approach belying (...)
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    De magie van taal: brein en bewustzijn, wijzelf en de Ander, taal en werkelijkheid.Net Koene - 2020 - Utrecht: Uitgeverij Eburon.
    Voor de taalgebruiker spreekt taal vanzelf, maar de taalonderzoeker staat voor raadsels. Woordvormen lijken in niets op hun betekenis. En taalconstructies lijken onlogisch in elkaar te zitten. Toch kunnen we in een enkele zin onze bedoelingen tot in de subtielste nuances duidelijk maken. We hebben geen toegang tot het bewustzijn van de Ander maar kunnen desondanks gedachten met elkaar uitwisselen. We kunnen de werkelijkheid met elkaar bespreken en fictieve werelden met elkaar delen alsof ze toch ergens buiten onszelf bestaan. De (...)
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    Cognitive Architecture, Holistic Inference and Bayesian Networks.Timothy J. Fuller - 2019 - Minds and Machines 29 (3):373-395.
    Two long-standing arguments in cognitive science invoke the assumption that holistic inference is computationally infeasible. The first is Fodor’s skeptical argument toward computational modeling of ordinary inductive reasoning. The second advocates modular computational mechanisms of the kind posited by Cosmides, Tooby and Sperber. Based on advances in machine learning related to Bayes nets, as well as investigations into the structure of scientific and ordinary information, I maintain neither argument establishes its architectural conclusion. Similar considerations also undermine Fodor’s decades-long diagnosis (...)
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  40. Modelling mechanisms with causal cycles.Brendan Clarke, Bert Leuridan & Jon Williamson - 2014 - Synthese 191 (8):1-31.
    Mechanistic philosophy of science views a large part of scientific activity as engaged in modelling mechanisms. While science textbooks tend to offer qualitative models of mechanisms, there is increasing demand for models from which one can draw quantitative predictions and explanations. Casini et al. (Theoria 26(1):5–33, 2011) put forward the Recursive Bayesian Networks (RBN) formalism as well suited to this end. The RBN formalism is an extension of the standard Bayesian net formalism, an extension that allows for modelling (...)
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  41. Fiziko-matematicheskoe poznanie: priroda, osnovanii︠a︡, dinamika.Valentin Sergeevich Lukʹi︠a︡net︠s︡ - 1992 - Kiev: Nauk. dumka. Edited by A. M. Kravchenko, N. A. Gudkov & Viktorii︠a︡ Lʹvovna Khramova.
     
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  42. Prot︠s︡essy i pribory.K. Kudu, I︠A︡ Reĭnet, O. Saks & A. Khalʹi︠a︡ste (eds.) - 1977 - Tartu: Taruskiĭ gosudarstvennyĭ universitet.
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  43. Filosofskie osnovanii︠a︡ matematicheskogo poznanii︠a︡.Valentin Sergeevich Lukʹi︠a︡net︠s︡ - 1980 - Kiev: "Nauk. dumka,".
     
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  44. Paul Weirich.Bayesian Justification - 1994 - In Dag Prawitz & Dag Westerståhl (eds.), Logic and Philosophy of Science in Uppsala. Kluwer Academic Publishers. pp. 245.
     
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  45.  13
    A Few Remarks on the Socio-cultural Symbol.Mariana Neṭ - 1990 - Semiotics:134-139.
  46.  21
    Bucharest Statues at the Turn of the 19th Century. A Semiotic Approach.Mariana Neţ - 2010 - American Journal of Semiotics 26 (1-4):49-65.
    Jeff Bernard was a distinguished semiotician, always au courant with the main accomplishments in the field. Although Jeff himself had specialized in socio-semiotics, his architectural training and his artistic youth had lent him a really open mind, able to comprehend almost everything.Jeff Bernard was also an excellent administrator. He and Gloria organized countless international conferences, most of them based in Vienna (at the Institute for Socio-Semiotic Studies Jeff was the director of ), but also in other places in Austria, Germany, (...)
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    History, mentalities, justifications: The case of post-war Romanian memoirs.Mariana Neţ - 2000 - Semiotica 128 (3-4):387-406.
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    Literature, strategies and metalanguage, part 1.Mariana Neţ - 1993 - Semiotica 93 (3-4):241-268.
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    Literature, strategies, and metalanguage, part 2: Grammar and metalanguage.Marlana Neţ - 1993 - Semiotica 94 (1-2):55-84.
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    Literature, strategies and metalanguage, part 3: Poetical arts and metalanguage.Mariana Neţ - 1993 - Semiotica 94 (3-4):253-294.
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