Ryan James McCall
University of Memphis
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Publication
Featured researches published by Ryan James McCall.
PLOS ONE | 2008
Rick Dale; Jennifer Roche; Kristy Snyder; Ryan James McCall
Much evidence exists supporting a richer interaction between cognition and action than commonly assumed. Such findings demonstrate that short-timescale processes, such as motor execution, may relate in systematic ways to longer-timescale cognitive processes, such as learning. We further substantiate one direction of this interaction: the flow of cognition into action systems. Two experiments explored match-to-sample paired-associate learning, in which participants learned randomized pairs of unfamiliar symbols. During the experiments, their hand movements were continuously tracked using the Nintendo Wiimote. Across learning, participant arm movements are initiated and completed more quickly, exhibit lower fluctuation, and exert more perturbation on the Wiimote during the button press. A second experiment demonstrated that action dynamics index novel learning scenarios, and not simply acclimatization to the Wiimote interface. Results support a graded and systematic covariation between cognition and action, and recommend ways in which this theoretical perspective may contribute to applied learning contexts.
artificial general intelligence | 2011
Javier Snaider; Ryan James McCall; Stan Franklin
Intelligent software agents aiming for general intelligence are likely to be exceedingly complex systems and, as such, will be difficult to implement and to customize. Frameworks have been applied successfully in large-scale software engineering applications. A framework constitutes the skeleton of the application, capturing its generic functionality. Frameworks are powerful as they promote code reusability and significantly reduce the amount of effort necessary to develop customized applications. They are well suited for the implementation of AGI software agents. Here we describe the LIDA framework, a customizable implementation of the LIDA model of cognition. We argue that its characteristics make it suitable for wider use in developing AGI cognitive architectures.
artificial general intelligence | 2013
Stan Franklin; Steve Strain; Ryan James McCall; Bernard J. Baars
Abstract Significant debate on fundamental issues remains in the subfields of cognitive science, including perception, memory, attention, action selection, learning, and others. Psychology, neuroscience, and artificial intelligence each contribute alternative and sometimes conflicting perspectives on the supervening problem of artificial general intelligence (AGI). Current efforts toward a broad-based, systems-level model of minds cannot await theoretical convergence in each of the relevant subfields. Such work therefore requires the formulation of tentative hypotheses, based on current knowledge, that serve to connect cognitive functions into a theoretical framework for the study of the mind. We term such hypotheses “conceptual commitments” and describe the hypotheses underlying one such model, the Learning Intelligent Distribution Agent (LIDA) Model. Our intention is to initiate a discussion among AGI researchers about which conceptual commitments are essential, or particularly useful, toward creating AGI agents.
Cognitive Systems Research | 2012
Javier Snaider; Ryan James McCall; Stan Franklin
Time perception and inferences there from are of critical importance to many autonomous agents. But time is not perceived directly by any sensory organ. We argue that time is constructed by cognitive processes. Here we present a model for time perception that concentrates on succession and duration, and that generates these concepts and others, such as continuity, immediate present duration, and lengths of time. These concepts are grounded through the perceptual process itself. The LIDA cognitive model is used to illustrate these ideas.
biologically inspired cognitive architectures | 2012
Stan Franklin; Steve Strain; Javier Snaider; Ryan James McCall; Usef Faghihi
biologically inspired cognitive architectures | 2012
Usef Faghihi; Ryan James McCall; Stan Franklin
biologically inspired cognitive architectures | 2015
Usef Faghihi; Clayton Estey; Ryan James McCall; Stan Franklin
the florida ai research society | 2010
Ryan James McCall; Stan Franklin; David Friedlander
Archive | 2013
Ryan James McCall; Stan Franklin
biologically inspired cognitive architectures | 2009
Javier Snaider; Ryan James McCall; Stan Franklin