19/07/20141 Cognition, Cognitics, and Team Action – Five Theses for a Better World Jean-Daniel.Dessimoz, 1 Hesso // Western.

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19/07/20141 Cognition, Cognitics, and Team Action – Five Theses for a Better World Jean-Daniel.Dessimoz, 1 Hesso // Western Switzerland University of Applied Sciences Heig-vd // School of Business and Engineering, CH-1400 Yverdon-les-Bains, Switzerland Western Switzerland University of Applied Sciences,CH-1400 Yverdon-les-Bains, Switzerland Foster Research and Education in Cognition

In cognition, backtracking is the rule. From the selected goal, specifications are derived, which then lead the cognitive process, and in particular an active perception (“exploration”) faculty capable of acquiring the non-physical experience necessary for action and possibly later improvements. 1. Cognition to perceive, explore and model the world Current goals and processes may result from exploration performed and/or experience acquired by an agent running a given cognitive process in a certain domain of reality. Initial goals and processes are innate (or “wired”). Foster Research and Education in Cognition 19/07/2014J.-D. Dessimoz, HESSO.HEIG-VD, IAS Conference 2014, WS-NRF2

2. Cognition to define alternative worlds and possible futures, visions, triggering anti-causality Cognition is not bound to address only models of physical reality Extraordinary capability to define alternative conceptual worlds, assumptions, possible futures… … “visions”, capable to inspire and trigger the autonomous action of cognitive agents => anti-causality ; re also Kant: freedom, from a transcendantal rational source rather than from the perceived reality Foster Research and Education in Cognition 19/07/2014J.-D. Dessimoz, HESSO.HEIG-VD, IAS Conference 2014, WS-NRF3

3. Cognition for effective control Foster Research and Education in Cognition 19/07/2014J.-D. Dessimoz, HESSO.HEIG-VD, IAS Conference 2014, WS-NRF4 Capabilities essentially cognitive, in perception, modeling, decision-making, and concretization Consider a cognitive system driving a target system “open-loop”, i.e. as a sequence of commands defined a priori “Closed-loop”, whereby corrective actions are dynamically generated as functions of the perceived effects of unforeseen disturbances incl. cascaded, hierarchical, multi-agent, autonomous or "social" systems (re. below) Robotics for grounding and deploying automated cognition in the real world

4. Automated cognition – Cognitics for large scale deployment Foster Research and Education in Cognition For ages, mostly performed by humans Now, starting, by artificial cognitive systems (ACS) (digital systems, e. g. computers, service-oriented comm. networks, smart systems or robots) => Drastic changes in people’s life, as if a much larger number of human workers were available for service And better!, with technical support E.g.: Leg => transportation (car, etc.) Eye => augmented vision ("x"-scopes, etc.) Brain => augmented cognition, ICT and cognitics (examples in paper) 19/07/2014J.-D. Dessimoz, HESSO.HEIG-VD, IAS Conference 2014, WS-NRF5

Consider consolidating multiple, individual ACS’s into a novel, meta- level, self-coordinated ACS, a “group” => more actions and benefits. Among new problems relationships across levels, e.g. between an individual member, and the group as a whole; conflict management when an individual ACS is simultaneously a member of multiple groups, different in culture (scope, shared values, etc.). A property arising from groups : only at a single level, they can be physically defined; in cognitive world though, these difficulties do not apply Further progress in science and engineering are required in social technologies and cognition. 5. Social cognition for team forming, and achieving more benefits, common as well as individual Foster Research and Education in Cognition 19/07/2014J.-D. Dessimoz, HESSO.HEIG-VD, IAS Conference 2014, WS-NRF6

Mankind has gained a decisive advantage with cognition Now we have to Foster Research and Education in Cognition, for at least the 5 reasons just given: to know the world, to explore and perceive, to model for defining alternative worlds and possible futures, visions, anti-causality for effective control for large scale, technical deployment of ACS (cognitics) as a foundation for team action and increased momentum for change (social cognitics) The five theses can be seen both as a roadmap for the development of simultaneous and iterative processes capable to freely forge a better future. and as paths towards better insights in human and social nature Conclusion Foster Research and Education in Cognition Text and slides, with comments: 19/07/2014J.-D. Dessimoz, HESSO.HEIG-VD, IAS Conference 2014, WS-NRF7