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On the Study and Development of Biological Plausible Computational Intelligent Models

Grant number: 23/10823-6
Support Opportunities:Scholarships in Brazil - Support Program for Fixating Young Doctors
Start date: August 01, 2023
End date: June 30, 2025
Field of knowledge:Physical Sciences and Mathematics - Computer Science - Computing Methodologies and Techniques
Agreement: CNPq
Principal Investigator:João Paulo Papa
Grantee:Leandro Aparecido Passos Junior
Host Institution: Faculdade de Ciências (FC). Universidade Estadual Paulista (UNESP). Campus de Bauru. Bauru , SP, Brazil
Associated research grant:23/01374-3 - On the study and development of biological plausible computational intelligent models, AP.R

Abstract

Recent neurological discoveries on the cortex, the hippocampus, and different areas of the brain shed light on pyramidal cells, a neuronal architecture composed of five layers, i.e., Soma, Basal dendrites, Apical dendrites, Axon, and Collateral axon, whose interaction is responsible for the forward and backward flow of information, as well as the integration among context and memory, among other tasks. Such discoveries inspired the development of more biologically plausible intelligent computational models, usually implying more accurate and efficient algorithms. Regarding such models, one can cite contextually guided approaches, which mimic pyramidal cells' behavior by using contextual information to deal with ambiguity, implementing mechanisms to tackle temporal information and simulate the memory. Other studies go beyond dealing with the credit assignment problem, i.e., assign each connection in a neural network a proper adjustment based on its influence on the output through the primary principles of pyramidal neurons. In this context, burst-dependent learning or Burstpropagation provides a paradigm based on such principles, which can be implemented on fully-connected, convolutional, and spiking neural networks, reaching state-of-the-art results. This project aims to implement existing models and develop more biologically plausible machine learning architectures, as well as apply such techniques to tackle problems in diverse research fields, like medicine and engineering.

News published in Agência FAPESP Newsletter about the scholarship:
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Scientific publications (5)
(References retrieved automatically from Web of Science and SciELO through information on FAPESP grants and their corresponding numbers as mentioned in the publications by the authors)
OLIVEIRA, GUILHERME C.; NGO, QUOC C.; PASSOS, LEANDRO A.; OLIVEIRA, LEONARDO S.; PAPA, JOAO P.; KUMAR, DINESH. Facial expressions to identify post-stroke: A pilot study. COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, v. 250, p. 7-pg., . (23/10823-6, 23/14427-8, 19/07665-4, 23/14197-2, 13/07375-0)
OLIVEIRA, GUILHERME C.; ROSA, GUSTAVO H.; PEDRONETTE, DANIEL C. G.; PAPA, JOAO P.; KUMAR, HIMEESH; PASSOS, LEANDRO A.; KUMAR, DINESH. Robust deep learning for eye fundus images: Bridging real and synthetic data for enhancing generalization. Biomedical Signal Processing and Control, v. 94, p. 9-pg., . (19/02205-5, 19/00585-5, 23/10823-6, 14/12236-1, 18/15597-6, 19/07665-4, 13/07375-0)
DE ROSA, GUSTAVO H.; RODER, MATEUS; PASSOS, LEANDRO A.; PAPA, JOAO PAULO. A comprehensive study among distance measures on supervised optimum-path forest classification. APPLIED SOFT COMPUTING, v. 164, p. 10-pg., . (20/12101-0, 19/02205-5, 23/10823-6, 14/12236-1, 19/07665-4, 13/07375-0)
TMAMNA, JIHENE; FOURATI, RAHMA; BEN AYED, EMNA; PASSOS, LEANDRO A.; PAPA, JOAO P.; BEN AYED, MOUNIR; HUSSAIN, AMIR. A binary particle swarm optimization-based pruning approach for environmentally sustainable and robust CNNs. Neurocomputing, v. 608, p. 16-pg., . (23/10823-6)
PASSOS, LEANDRO A.; JODAS, DANILO; COSTA, KELTON A. P.; SOUZA, LUIS A.; RODRIGUES, DOUGLAS; DEL SER, JAVIER; CAMACHO, DAVID; PAPA, JOAO PAULO. A review of deep learning-based approaches for deepfake content detection. EXPERT SYSTEMS, v. 41, n. 8, p. 34-pg., . (21/05516-1, 23/10823-6, 14/12236-1, 19/07665-4, 13/07375-0)