Praxis of cognitive onto- . hermeneutical logic on learning machines
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Date
2008-05
Authors
Ramakrishnan, Sivakumar s/o
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Abstract
The primary purpose of this dissertation is to provide a relatively simplistic system called Praxis
Of Cognitive Onto-Hermeneutical Logic On Learning Machines in which the human
consciousness, be incorporated into the study of onto-hermeneutic, to design Intentional Agent
(or Learning Machine) at the leading edge of the Artificial Intelligence (AI). Praxis Of
Cognitive Onto-Hermeneutical Logic On Learning Machines is an attempt to structurally and
logically construct the practice of ontological hermeneutics( applying the teclmique of
intepretation in the existence of phenomena) which can be cognized by the learning machines in
its discourses. The hermeneutical logic(logic of intepretation) architecture which has been
modelled as NEO -ONTO-HERMENEUTIC DEJA VU LIFE CYCLE (NOHDLC) in this
dissertation is intended to reveal the explanatory procedures of social events shared in a
discourse by two agents called actor and reactor in structural mathematical logics. This model
will compactly analyse the processes and events of human interaction to the methods suitable
for scientific enquiries and to transmigrate the methods as the "psyches" of learning machine
(intentional agent) in Artificial Intelligence. The NOHDLC act as suitable intelligent behavior
model for learning machine to handle the logics of ambiguity, vagueness and contradictions in a
discourse. NOHDLC involves four major cyclic phases: Ontological Commitment, Ontopretation,
Hermeneutical Archeoduction and Consumptive Illumination
Ontological Commitment phase will analyse how the process of laying a prior intentional ground
is possible within an actor. Committing ontology( the existence of phenomena) into intention by
framing the existence(being exist) and onto-presupposition (pre-understanding of history ) in a
discourse are a relaying intention process.This relaying intention process will be the core content
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of Ontological Commitment phase.Onto-pretation phase is a continuity of Ontological
Commitment phase which will analyse the ontological interpretation state (or becoming
aware of intention) of an actor in a discourse. Onto-pretation is process of an actor's explicit
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cognizant process of compartmentalizing the global intention into local intentions. This
process of Onto-pretation can only be elucidated by proj ectilfg ontological
conceptualization into physical events using the method called episodization( episodic
progression). Hermeneutical Archeoduction phase will analyse the engaging (grasping of
intention causes or discloses) process between an actor and a reactor in a discourse.This
process is a reactor's attempts to SIGHT a reality that remains hidden in the actor's
cognition world (or to understand the onto-pretation state of an actor). The act of
structurally extracting the ontopretive knowledge of an actor by the reactor using a
discovery or elicitation method is called Hermeneutical Archeoduction.Consumptive - Illumination is the last phase in the NOHDLC. This phase will synthesize the whole
interpretive exercise of a discourse by unearthing the global goal of the discourse. In another term
Consumptive Illumination is a process of a reactor's attempts to consume the "discourse
reality" which will illuminate the reactor's absolute understanding towards actor's
GOAL(a state where the reactor intentionaly fused with the actor). This attainment enables
the reactor to normalize the ill-structured states like contradiction, vagueness and ambiguity in a
discourse into well structured and well mended form. The NOHDLC exhibit an unique ontohermeneutic
properties that can be successfully applied into many specific disciplines like,
planning, ontological analysis, cognitive analysis, language and linguistic analysis,
semiotic system analysis, communication or discourse analysis etc., in which hermeneutic
is a primary requirement.
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Keywords
Cognitive onto-hermeneutica , Learning machines