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Advanced filters: Author: Michael Hersche Clear advanced filters
  • Neuro-symbolic artificial intelligence approaches display both perception and reasoning capabilities, but inherit the limitations of their individual deep learning and symbolic artificial intelligence components. By combining neural networks and vector-symbolic architectures, Hersche and colleagues propose a neuro-vector-symbolic framework that can solve Raven’s progressive matrices tests faster and more accurately than other state-of-the-art methods.

    • Michael Hersche
    • Mustafa Zeqiri
    • Abbas Rahimi
    Research
    Nature Machine Intelligence
    Volume: 5, P: 363-375
  • Sensory signal attributes can be disentangled exploiting the computation-in-superposition capability of hyperdimensional computing, in-memory computing and associated intrinsic device-level stochasticity.

    • Jovin Langenegger
    • Geethan Karunaratne
    • Abbas Rahimi
    Research
    Nature Nanotechnology
    Volume: 18, P: 479-485