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  1. (1 other version)Extending Introspection.Lukas Schwengerer - 2021 - In Inês Hipólito, Robert William Clowes & Klaus Gärtner (eds.), The Mind-Technology Problem : Investigating Minds, Selves and 21st Century Artefacts. Springer Verlag. pp. 231-251.
    Clark and Chalmers propose that the mind extends further than skin and skull. If they are right, then we should expect this to have some effect on our way of knowing our own mental states. If the content of my notebook can be part of my belief system, then looking at the notebook seems to be a way to get to know my own beliefs. However, it is at least not obvious whether self-ascribing a belief by looking at my notebook (...)
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  • Challenges for an Ontology of Artificial Intelligence.Scott H. Hawley - 2019 - Perspectives on Science and Christian Faith 71 (2):83-95.
    Of primary importance in formulating a response to the increasing prevalence and power of artificial intelligence (AI) applications in society are questions of ontology. Questions such as: What “are” these systems? How are they to be regarded? How does an algorithm come to be regarded as an agent? We discuss three factors which hinder discussion and obscure attempts to form a clear ontology of AI: (1) the various and evolving definitions of AI, (2) the tendency for pre-existing technologies to be (...)
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  • (1 other version)Predicting Me: The Route to Digital Immortality?Paul Smart - 2021 - In Inês Hipólito, Robert William Clowes & Klaus Gärtner (eds.), The Mind-Technology Problem : Investigating Minds, Selves and 21st Century Artefacts. Springer Verlag. pp. 185–207.
    An emerging consensus in cognitive science views the biological brain as a hierarchically-organized predictive processing system that relies on generative models to predict the structure of sensory information. Such a view resonates with a body of work in machine learning that has explored the problem-solving capabilities of hierarchically-organized, multi-layer (i.e., deep) neural networks, many of which acquire and deploy generative models of their training data. The present chapter explores the extent to which the ostensible convergence on a common neurocomputational architecture (...)
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  • (1 other version)Theopolis Monk: Envisioning a Future of A.I. Public Service.Scott H. Hawley - 2019 - In Newton Lee (ed.), The Transhumanism Handbook. Springer Verlag. pp. 271-300.
    Visions of future applications of artificial intelligence tend to veer toward the naively optimistic or frighteningly dystopian, neglecting the numerous human factors necessarily involved in the design, deployment and oversight of such systems. The dream that AI systems may somehow replace the irregularities and struggles of human governance with unbiased efficiency is seen to be non-scientific and akin to a religious hope, whereas the current trajectory of AI development indicates that it will increasingly serve as a tool by which humans (...)
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  • Situating Machine Intelligence Within the Cognitive Ecology of the Internet.Paul Smart - 2017 - Minds and Machines 27 (2):357-380.
    The Internet is an important focus of attention for the philosophy of mind and cognitive science communities. This is partly because the Internet serves as an important part of the material environment in which a broad array of human cognitive and epistemic activities are situated. The Internet can thus be seen as an important part of the ‘cognitive ecology’ that helps to shape, support and realize aspects of human cognizing. Much of the previous philosophical work in this area has sought (...)
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