DocumentCode :
68777
Title :
Cognitive Control: Theory and Application
Author :
Fatemi, Mehdi ; Haykin, Simon
Author_Institution :
Sch. of Comput. Sci. & Eng., McMaster Univ., Hamilton, ON, Canada
Volume :
2
fYear :
2014
fDate :
2014
Firstpage :
698
Lastpage :
710
Abstract :
From an engineering point-of-view, cognitive control is inspired by the prefrontal cortex of the human brain; cognitive control may therefore be viewed as the overarching function of a cognitive dynamic system. In this paper, we describe a new way of thinking about cognitive control that embodies two basic components: learning and planning, both of which are based on two notions: 1) two-state model of the environment and the perceptor and 2) perception-action cycle, which is a distinctive characteristic of the cognitive dynamic system. Most importantly, it is shown that the cognitive control learning algorithm is a special form of Bellman´s dynamic programming. Distinctive properties of the new algorithm include the following: 1) optimality of performance; 2) algorithmic convergence to optimal policy; and 3) linear law of complexity measured in terms of the number of actions taken by the cognitive controller on the environment. To validate these intrinsic properties of the algorithm, a computational experiment is presented, which involves a cognitive tracking radar that is known to closely mimic the visual brain. The experiment illustrates two different scenarios: 1) the impact of planning on learning curves of the new cognitive controller and 2) comparison of the learning curves of three different controllers, based on dynamic optimization, traditional (Q) -learning, and the new algorithm. The latter two algorithms are based on the two-state model, and they both involve the use of planning.
Keywords :
cognition; computational complexity; dynamic programming; Bellman dynamic programming; Q-learning; algorithmic convergence; cognitive control learning algorithm; cognitive dynamic system; cognitive tracking radar; dynamic optimization; human brain; learning curves; linear complexity law; perception-action cycle; performance optimality; prefrontal cortex; two-state model; visual brain; Brain modeling; Cognition; Complexity theory; Control systems; Dynamic programming; Heuristic algorithms; Perception; Radar tracking; Bayesian filtering; Cognitive dyanamic systems; Shannon´s entropy; cognitive control; dynamic programming; entropic state; explore/exploit tradeoff; learning; planning; two-state model;
fLanguage :
English
Journal_Title :
Access, IEEE
Publisher :
ieee
ISSN :
2169-3536
Type :
jour
DOI :
10.1109/ACCESS.2014.2332333
Filename :
6843352
Link To Document :
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