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Giuseppe Cuccu

Researcher at University of Fribourg

Publications -  24
Citations -  498

Giuseppe Cuccu is an academic researcher from University of Fribourg. The author has contributed to research in topics: Reinforcement learning & Artificial neural network. The author has an hindex of 9, co-authored 21 publications receiving 438 citations. Previous affiliations of Giuseppe Cuccu include SUPSI & University of Lugano.

Papers
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Proceedings ArticleDOI

Evolving large-scale neural networks for vision-based reinforcement learning

TL;DR: This paper scale-up their compressed network encoding where network weight matrices are represented indirectly as a set of Fourier-type coefficients, to tasks that require very-large networks due to the high-dimensionality of their input space.
Book ChapterDOI

When novelty is not enough

TL;DR: This paper shows, using a task with a much larger solution space, that selecting for novelty alone does not offer an advantage over fitness-based selection, and examines how the idea of novelty search can be used to sustain diversity and improve the performance of standard, fitness- based search.
Journal ArticleDOI

Playing Atari with Six Neurons

TL;DR: This work proposes a new method for learning policies and compact state representations separately but simultaneously for policy approximation in reinforcement learning, using tiny neural networks of only 6 to 18 neurons.
Proceedings Article

Evolving Large-Scale Neural Networks for Vision-Based TORCS

TL;DR: To the authors' knowledge this is the first attempt to tackle TORCS using vision, and successfully evolve a neural network controllers of this size.
Proceedings ArticleDOI

Intrinsically motivated neuroevolution for vision-based reinforcement learning

TL;DR: An unsupervised sensory pre-processor or compressor that is trained on images generated from the environment by the population of evolving recurrent neural network controllers, which reduces the input cardinality of the controllers, but also biases the search toward novel controllers by rewarding those controllers that discover images that it reconstructs poorly.