A Neurocomputational Account of Flexible Goal-directed Cognition and
Consciousness: The Goal-Aligning Representation Internal Manipulation Theory
(GARIM)
- URL: http://arxiv.org/abs/1912.13490v4
- Date: Fri, 27 Oct 2023 12:08:01 GMT
- Title: A Neurocomputational Account of Flexible Goal-directed Cognition and
Consciousness: The Goal-Aligning Representation Internal Manipulation Theory
(GARIM)
- Authors: Giovanni Granato and Gianluca Baldassarre
- Abstract summary: Goal-directed manipulation of representations is a key element of human flexible behaviour.
GarIM theory integrates key aspects of the main theories of consciousness into the functional neuro-computational framework of goal-directed behaviour.
Proposal has implications for experimental studies on consciousness and clinical aspects of conscious goal-directed behaviour.
- Score: 0.9669369645900444
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Goal-directed manipulation of representations is a key element of human
flexible behaviour, while consciousness is often related to several aspects of
higher-order cognition and human flexibility. Currently these two phenomena are
only partially integrated (e.g., see Neurorepresentationalism) and this (a)
limits our understanding of neuro-computational processes that lead conscious
states to produce flexible goal-directed behaviours, (b) prevents a
computational formalisation of conscious goal-directed manipulations of
representations occurring in the brain, and (c) inhibits the exploitation of
this knowledge for modelling and technological purposes. Addressing these
issues, here we extend our `three-component theory of flexible cognition' by
proposing the `Goal-Aligning Representations Internal Manipulation' (GARIM)
theory of conscious and flexible goal-directed cognition. The central idea of
the theory is that conscious states support the active manipulation of
goal-relevant internal representations (e.g., of world states, objects, and
action sequences) to make them more aligned with the pursued goals. This leads
to the generation of the knowledge which is necessary to face novel
situations/goals, thus increasing the flexibility of goal-directed behaviours.
The GARIM theory integrates key aspects of the main theories of consciousness
into the functional neuro-computational framework of goal-directed behaviour.
Moreover, it takes into account the subjective sensation of agency that
accompanies conscious goal-directed processes (`GARIM agency'). The proposal
has also implications for experimental studies on consciousness and clinical
aspects of conscious goal-directed behaviour. Finally, the GARIM theory benefit
technological fields such as autonomous robotics and machine learning (e.g.,
the manipulation process may describe the operations performed by systems based
on transformers).
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