Alert button
Picture for Junior Barrera

Junior Barrera

Alert button

The Lattice Overparametrization Paradigm for the Machine Learning of Lattice Operators

Add code
Bookmark button
Alert button
Oct 10, 2023
Diego Marcondes, Junior Barrera

Viaarxiv icon

An Algorithm to Train Unrestricted Sequential Discrete Morphological Neural Networks

Add code
Bookmark button
Alert button
Oct 06, 2023
Diego Marcondes, Mariana Feldman, Junior Barrera

Viaarxiv icon

Discrete Morphological Neural Networks

Add code
Bookmark button
Alert button
Sep 01, 2023
Diego Marcondes, Junior Barrera

Figure 1 for Discrete Morphological Neural Networks
Figure 2 for Discrete Morphological Neural Networks
Figure 3 for Discrete Morphological Neural Networks
Figure 4 for Discrete Morphological Neural Networks
Viaarxiv icon

The role of prior information and computational power in Machine Learning

Add code
Bookmark button
Alert button
Oct 31, 2022
Diego Marcondes, Adilson Simonis, Junior Barrera

Figure 1 for The role of prior information and computational power in Machine Learning
Figure 2 for The role of prior information and computational power in Machine Learning
Figure 3 for The role of prior information and computational power in Machine Learning
Figure 4 for The role of prior information and computational power in Machine Learning
Viaarxiv icon

Learning the hypotheses space from data through a U-curve algorithm: a statistically consistent complexity regularizer for Model Selection

Add code
Bookmark button
Alert button
Sep 08, 2021
Diego Marcondes, Adilson Simonis, Junior Barrera

Figure 1 for Learning the hypotheses space from data through a U-curve algorithm: a statistically consistent complexity regularizer for Model Selection
Figure 2 for Learning the hypotheses space from data through a U-curve algorithm: a statistically consistent complexity regularizer for Model Selection
Figure 3 for Learning the hypotheses space from data through a U-curve algorithm: a statistically consistent complexity regularizer for Model Selection
Figure 4 for Learning the hypotheses space from data through a U-curve algorithm: a statistically consistent complexity regularizer for Model Selection
Viaarxiv icon

Learning the Hypotheses Space from data Part II: Convergence and Feasibility

Add code
Bookmark button
Alert button
Jan 30, 2020
Diego Marcondes, Adilson Simonis, Junior Barrera

Figure 1 for Learning the Hypotheses Space from data Part II: Convergence and Feasibility
Figure 2 for Learning the Hypotheses Space from data Part II: Convergence and Feasibility
Viaarxiv icon

Learning the Hypotheses Space from data Part I: Learning Space and U-curve Property

Add code
Bookmark button
Alert button
Jan 26, 2020
Diego Marcondes, Adilson Simonis, Junior Barrera

Figure 1 for Learning the Hypotheses Space from data Part I: Learning Space and U-curve Property
Figure 2 for Learning the Hypotheses Space from data Part I: Learning Space and U-curve Property
Figure 3 for Learning the Hypotheses Space from data Part I: Learning Space and U-curve Property
Figure 4 for Learning the Hypotheses Space from data Part I: Learning Space and U-curve Property
Viaarxiv icon

Feature Selection based on the Local Lift Dependence Scale

Add code
Bookmark button
Alert button
Dec 18, 2017
Diego Marcondes, Adilson Simonis, Junior Barrera

Figure 1 for Feature Selection based on the Local Lift Dependence Scale
Figure 2 for Feature Selection based on the Local Lift Dependence Scale
Figure 3 for Feature Selection based on the Local Lift Dependence Scale
Figure 4 for Feature Selection based on the Local Lift Dependence Scale
Viaarxiv icon

The U-curve optimization problem: improvements on the original algorithm and time complexity analysis

Add code
Bookmark button
Alert button
Jul 22, 2014
Marcelo S. Reis, Carlos E. Ferreira, Junior Barrera

Figure 1 for The U-curve optimization problem: improvements on the original algorithm and time complexity analysis
Figure 2 for The U-curve optimization problem: improvements on the original algorithm and time complexity analysis
Figure 3 for The U-curve optimization problem: improvements on the original algorithm and time complexity analysis
Figure 4 for The U-curve optimization problem: improvements on the original algorithm and time complexity analysis
Viaarxiv icon

An iterative feature selection method for GRNs inference by exploring topological properties

Add code
Bookmark button
Alert button
Jul 25, 2011
Fabrício Martins Lopes, David C. Martins-Jr, Junior Barrera, Roberto M. Cesar-Jr

Figure 1 for An iterative feature selection method for GRNs inference by exploring topological properties
Figure 2 for An iterative feature selection method for GRNs inference by exploring topological properties
Figure 3 for An iterative feature selection method for GRNs inference by exploring topological properties
Figure 4 for An iterative feature selection method for GRNs inference by exploring topological properties
Viaarxiv icon