Philosophers have recently focused on critical, epistemological challenges that arise from the opacity of deep neural networks. One might conclude from this literature that doing good science with opaque models is exceptionally challenging, if not impossible. Yet, this is hard to square with the recent boom in optimism for AI in science alongside a flood of recent scientific breakthroughs driven by AI methods. In this paper, I argue that the disconnect between philosophical pessimism and scientific optimism is driven by a failure to examine how AI is actually used in science. I show that, in order to understand the epistemic justification for AI-powered breakthroughs, philosophers must examine the role played by deep learning as part of a w...
Cognitive scientists deal with technology in a very particular way: they use technology to understan...
What Deep Neural Networks (DNNs) can do is impressive, yet they are notoriously opaque. Responding t...
Endowing artificial systems with explanatory capacities about the reasons guiding their decisions, r...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Deep learning (DL) has become increasingly central to science, primarily due to its capacity to quic...
Although machine learning has been successful in recent years and is increasingly being deployed in ...
Although machine learning has been successful in recent years and is increasingly being deployed in ...
We scrutinize publications in automated scientific discovery using deep learning, with the aim of sh...
Deep learning is currently the most prominent and widely successful method in artificial intelligenc...
peer reviewedWhat Deep Neural Networks (DNNs) can do is impressive, yet they are notoriously opaque....
Cognitive scientists deal with technology in a very particular way: they use technology to understan...
What Deep Neural Networks (DNNs) can do is impressive, yet they are notoriously opaque. Responding t...
Endowing artificial systems with explanatory capacities about the reasons guiding their decisions, r...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Philosophers have recently focused on critical, epistemological challenges that arise from the opaci...
Deep learning (DL) has become increasingly central to science, primarily due to its capacity to quic...
Although machine learning has been successful in recent years and is increasingly being deployed in ...
Although machine learning has been successful in recent years and is increasingly being deployed in ...
We scrutinize publications in automated scientific discovery using deep learning, with the aim of sh...
Deep learning is currently the most prominent and widely successful method in artificial intelligenc...
peer reviewedWhat Deep Neural Networks (DNNs) can do is impressive, yet they are notoriously opaque....
Cognitive scientists deal with technology in a very particular way: they use technology to understan...
What Deep Neural Networks (DNNs) can do is impressive, yet they are notoriously opaque. Responding t...
Endowing artificial systems with explanatory capacities about the reasons guiding their decisions, r...