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E-democracy as the frame of networked public discourse : information, consensus and complexity
(2012)
The quest for democracy and the political reflection about its future are to be understood nowadays in the horizon of the networked information revolution. Hence, it seems difficult to speak of democracy without speaking of e-democracy, the key issue of which is the re-configuration of models of information production and concentration of attention, which are to be investigated both from a political and an epistemological standpoint. In this perspective, our paper aims at analyzing the multi-agent dimension of networked public discourse, by envisaging two competing models of structuring this discourse (those of dialogue and of claim) and by suggesting to endorse the epistemic idea of complementarity as a guidance principle for elaborating a form of partnership between traditional and electronic media.
What is it that makes the subject of bioethics autonomous? The problem that this research tries to clarify is What is it that makes the subject of bioethics autonomous? This question is answered from an applied ethics, bioethics. This article will show a new methodological approach to study the subject of bioethics.
The principal objetives of this research that is presented here, are related to the relationship between: 1) Autonomy and information; 2) Autonomy and responsability; 3) Autonomy and freedom; and 4) Autonomy and social ties or social links.
Self-organized complexity and Coherent Infomax from the viewpoint of Jaynes’s probability theory
(2012)
This paper discusses concepts of self-organized complexity and the theory of Coherent Infomax in the light of Jaynes’s probability theory. Coherent Infomax, shows, in principle, how adaptively self-organized complexity can be preserved and improved by using probabilistic inference that is context-sensitive. It argues that neural systems do this by combining local reliability with flexible, holistic, context-sensitivity. Jaynes argued that the logic of probabilistic inference shows it to be based upon Bayesian and Maximum Entropy methods or special cases of them. He presented his probability theory as the logic of science; here it is considered as the logic of life. It is concluded that the theory of Coherent Infomax specifies a general objective for probabilistic inference, and that contextual interactions in neural systems perform functions required of the scientist within Jaynes’s theory.