Wanting to Be Understood Explains the Meta-Problem of Consciousness
Chrisantha Fernando, Dylan Banarse, Simon Osindero

TL;DR
The paper argues that the hard problem of consciousness stems from our desire to be understood, which leads to inflated epistemic demands and the creation of external representations, rather than an irreducible metaphysical gap.
Contribution
It proposes that the drive to be understood explains the persistence of the hard problem of consciousness, linking external representations to access consciousness and subjective experience.
Findings
External representations are necessary for access consciousness.
The desire to be understood inflates epistemic demands, sustaining the hard problem.
Humans continually develop new ways to communicate and understand experiences.
Abstract
Because we are highly motivated to be understood, we created public external representations -- mime, language, art -- to externalise our inner states. We argue that such external representations are a pre-condition for access consciousness, the global availability of information for reasoning. Yet the bandwidth of access consciousness is tiny compared with the richness of `raw experience', so no external representation can reproduce that richness in full. Ordinarily an explanation of experience need only let an audience `grasp' the relevant pattern, not relive the phenomenon. But our drive to be understood, and our low level sensorimotor capacities for `grasping' so rich, that the demand for an explanation of the feel of experience cannot be ``satisfactory''. That inflated epistemic demand (the preeminence of our expectation that we could be perfectly understood by another or…
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Taxonomy
TopicsNeuroethics, Human Enhancement, Biomedical Innovations
MethodsAttentive Walk-Aggregating Graph Neural Network
