998 resultados para Cannavino, Andy


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[more cropped version of bl013003]

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LBI

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Tesis (Maestría en Administración de Empresas) U.A.N.L.

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Photos of the library by Andy Vowles

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Un cuento de Alaska. Relata las aventuras de un perro ovejero que va a vivir con sus dueños, maestros de escuela, a una remota aldea esquimal y cómo él y los habitantes se acostumbran a convivir. Los niños juegan con el perro y un día éste se pierde en las montañas. Todo el mundo en el pueblo lo busca hasta que un vecino de otro pueblo lo lleva a la aldea montando en una moto de nieve.

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Undeniably, anticipation plays a crucial role in cognition. By what means, to what extent, and what it achieves remain open questions. In a recent BBS target article, Clark (in press) depicts an integrative model of the brain that builds on hierarchical Bayesian models of neural processing (Rao and Ballard, 1999; Friston, 2005; Brown et al., 2011), and their most recent formulation using the free-energy principle borrowed from thermodynamics (Feldman and Friston, 2010; Friston, 2010; Friston et al., 2010). Hierarchical generative models of cognition, such as those described by Clark, presuppose the manipulation of representations and internal models of the world, in as much detail as is perceptually available. Perhaps surprisingly, Clark acknowledges the existence of a “virtual version of the sensory data” (p. 4), but with no reference to some of the historical debates that shaped cognitive science, related to the storage, manipulation, and retrieval of representations in a cognitive system (Shanahan, 1997), or accounting for the emergence of intentionality within such a system (Searle, 1980; Preston and Bishop, 2002). Instead of demonstrating how this Bayesian framework responds to these foundational questions, Clark describes the structure and the functional properties of an action-oriented, multi-level system that is meant to combine perception, learning, and experience (Niedenthal, 2007).