2023
DOI: 10.48550/arxiv.2302.09071
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Rejecting Cognitivism: Computational Phenomenology for Deep Learning

Abstract: We propose a non-representationalist framework for deep learning relying on a novel method: computational phenomenology, a dialogue between the first-person perspective (relying on phenomenology) and the mechanisms of computational models. We thereby reject the modern cognitivist interpretation of deep learning, according to which artificial neural networks encode representations of external entities. This interpretation mainly relies on neuro-representationalism, a position that combines a strong ontological … Show more

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References 73 publications
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