Search Results for author: Juan G. Colonna

Found 6 papers, 3 papers with code

Process Mining Embeddings: Learning Vector Representations for Petri Nets

1 code implementation26 Apr 2024 Juan G. Colonna, Ahmed A. Fares, Márcio Duarte, Ricardo Sousa

Process mining offers powerful techniques for discovering, analyzing, and enhancing real-world business processes.

Tasks People Prompt: A Taxonomy of LLM Downstream Tasks in Software Verification and Falsification Approaches

no code implementations14 Apr 2024 Víctor A. Braberman, Flavia Bonomo-Braberman, Yiannis Charalambous, Juan G. Colonna, Lucas C. Cordeiro, Rosiane de Freitas

Prompting has become one of the main approaches to leverage emergent capabilities of Large Language Models [Brown et al. NeurIPS 2020, Wei et al. TMLR 2022, Wei et al. NeurIPS 2022].

Vulnerability Detection

Catastrophic Forgetting in Deep Learning: A Comprehensive Taxonomy

no code implementations16 Dec 2023 Everton L. Aleixo, Juan G. Colonna, Marco Cristo, Everlandio Fernandes

Deep Learning models have achieved remarkable performance in tasks such as image classification or generation, often surpassing human accuracy.

Image Classification Incremental Learning

Bag of Tricks for Long-Tail Visual Recognition of Animal Species in Camera-Trap Images

1 code implementation24 Jun 2022 Fagner Cunha, Eulanda M. dos Santos, Juan G. Colonna

Although in most cases these rare species are the ones of interest to ecologists, they are often neglected when using deep-learning models because these models require a large number of images for the training.

Classification Long-tail Learning

Filtering Empty Camera Trap Images in Embedded Systems

1 code implementation18 Apr 2021 Fagner Cunha, Eulanda M. dos Santos, Raimundo Barreto, Juan G. Colonna

Monitoring wildlife through camera traps produces a massive amount of images, whose a significant portion does not contain animals, being later discarded.

Image Classification Quantization

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