Neural Representation
Neural representation research focuses on understanding how information is encoded and processed within neural networks and biological brains, aiming to improve both artificial intelligence and our understanding of cognition. Current research emphasizes characterizing the geometric and topological properties of these representations, often using techniques like representational similarity analysis and topological data analysis, and exploring various model architectures including transformers, Hopfield networks, and neural fields. These investigations are crucial for enhancing the robustness, efficiency, and interpretability of AI systems and for gaining deeper insights into brain function and dysfunction.
Papers
Tackling Cognitive Impairment Detection from Speech: A submission to the PROCESS Challenge
Catarina Botelho, David Gimeno-Gómez, Francisco Teixeira, John Mendonça, Patrícia Pereira, Diogo A.P. Nunes, Thomas Rolland, Anna Pompili, Rubén Solera-Ureña, Maria Ponte, David Martins de Matos, Carlos-D. Martínez-Hinarejos, Isabel Trancoso, Alberto Abad
Two-component spatiotemporal template for activation-inhibition of speech in ECoG
Eric Easthope