2017
Authors
Sousa, MJ; Abreu, PH; Rocha, A; Silva, DC;
Publication
IET SOFTWARE
Abstract
2018
Authors
Costa, AF; Santos, MS; Soares, JP; Abreu, PH;
Publication
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Abstract
Missing data consists in the lack of information in a dataset and since it directly influences classification performance, neglecting it is not a valid option. Over the years, several studies presented alternative imputation strategies to deal with the three missing data mechanisms, Missing Completely At Random, Missing At Random and Missing Not At Random. However, there are no studies regarding the influence of all these three mechanisms on the latest high-performance Artificial Intelligence techniques, such as Deep Learning. The goal of this work is to perform a comparison study between state-of-the-art imputation techniques and a Stacked Denoising Autoencoders approach. To that end, the missing data mechanisms were synthetically generated in 6 different ways; 8 different imputation techniques were implemented; and finally, 33 complete datasets from different open source repositories were selected. The obtained results showed that Support Vector Machines imputation ensures the best classification performance while Multiple Imputation by Chained Equations performs better in terms of imputation quality. © Springer Nature Switzerland AG 2018.
2021
Authors
Teixeira, AR; Rodrigues, I; Gomes, A; Abreu, P; Rodríguez Bermúdez, G;
Publication
AUGMENTED COGNITION, AC 2021
Abstract
2020
Authors
Santos, JC; Abreu, MH; Santos, MS; Duarte, H; Alpoim, T; Sousa, S; Abreu, PH;
Publication
JOURNAL OF CLINICAL ONCOLOGY
Abstract
2022
Authors
Costa, R; Soares, C; Vaz, C; Bernardes, M; Tavares, M; Abreu, P;
Publication
ARP RHEUMATOLOGY
Abstract
2014
Authors
Pereira, F; Silva, DC; Abreu, PH; Pinho, A;
Publication
NEW PERSPECTIVES IN INFORMATION SYSTEMS AND TECHNOLOGIES, VOL 2
Abstract
The growing use of smartphones has revolutionized the way people live, fostering the use of mobile application in the most diverse situations. These applications take advantage of the mobile device's capabilities to provide the user with useful and contextualized information, being equipped with increasingly intuitive interfaces, and offering richer contents in an attractive manner. Augmented reality emerges as one of the technologies that can be used in these applications, allowing for an improved user experience. This paper describes a tourism-oriented mobile application, in this case to be used in a botanical garden, which uses current mobile device's capabilities to provide the visitor with several ways to obtain the desired information. The results obtained from this application are shown, including images of the implemented features, and highlighting the results related to the use of augmented reality.
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