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Publications

Publications by Kelwin Alexander Correia

2019

Hypothesis transfer learning based on structural model similarity

Authors
Fernandes, K; Cardoso, JS;

Publication
NEURAL COMPUTING & APPLICATIONS

Abstract
Transfer learning focuses on building better predictive models by exploiting knowledge gained in previous related tasks, being able to soften the traditional supervised learning assumption of having identical train-test distributions. Most efforts on transfer learning consider revisiting the data from the source tasks or rely on transferring knowledge for specific models. In this paper, a general framework is proposed for transferring knowledge by including a regularization factor based on the structural model similarity between related tasks. The proposed approach is instantiated to different models for regression, classification, ranking and recommender systems, obtaining competitive results in all of them. Also, we explore high-level concepts in transfer learning like sparse transfer, partially observable transfer and cross-model transfer.

2012

A*mbush Family: A* Variations for Ambush Behavior and Path Diversity Generation

Authors
Fernández, K; González, G; Chang, C;

Publication
Motion in Games - Lecture Notes in Computer Science

Abstract

2012

Teeth/Palate and Interdental Segmentation Using Artificial Neural Networks

Authors
Fernandez, K; Chang, C;

Publication
Artificial Neural Networks in Pattern Recognition - Lecture Notes in Computer Science

Abstract

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