2007
Authors
Cardoso, MGMS; Gama, J; Carvalho, A;
Publication
Journal of Retailing and Consumer Services
Abstract
2001
Authors
Gama, J;
Publication
Advances in Intelligent Data Analysis, 4th International Conference, IDA 2001, Cascais, Portugal, September 13-15, 2001, Proceedings
Abstract
In this paper we present and evaluate a new algorithm for supervised learning regression problems. The algorithm combines a univariate regression tree with a linear regression function by means of constructive induction. When growing the tree, at each internal node, a linear-regression function creates one new attribute. This new attribute is the instantiation of the regression function for each example that fall at this node. This new instance space is propagated down through the tree. Tests based on those new attributes correspond to an oblique decision surface. Our approach can be seen as a hybrid model that combines a linear regression known to have low variance with a regression tree known to have low bias. Our algorithm was compared against to its components, and two simplified versions, and M5 using 16 benchmark datasets. The experimental evaluation shows that our algorithm has clear advantages with respect to the generalization ability when compared against its components and competes well against the state-of-art in regression trees. © Springer-Verlag Berlin Heidelberg 2001.
2007
Authors
Rodrigues, PP; Gama, J;
Publication
Modulad
Abstract
2008
Authors
Gama, J;
Publication
Next Generation of Data Mining.
Abstract
2008
Authors
May, M; Berendt, B; Cornuéjols, A; Gama, J; Giannotti, F; Hotho, A; Malerba, D; Menasalvas, E; Morik, K; Pedersen, RU; Saitta, L; Saygin, Y; Schuster, A; Vanhoof, K;
Publication
Next Generation of Data Mining.
Abstract
2012
Authors
Moreira Matias, L; Ferreira, C; Gama, J; Mendes Moreira, J; De Sousa, JF;
Publication
CEUR Workshop Proceedings
Abstract
Mining public transportation networks is a growing and explosive challenge due to the increasing number of information available. In highly populated urban zones, the vehicles can often fail the schedule. Such fails cause headway deviations (HD) between high-frequency bus pairs. In this paper, we propose to identify systematic HD which usually provokes the phenomenon known as Bus Bunching (BB). We use the PrefixSpan algorithm to accurately mine sequences of bus stops where multiple HD frequently emerges, forcing two or more buses to clump. Our results are promising: 1) we demonstrated that the BB origin can be modeled like a sequence mining problem where 2) the discovered patterns can easily identify the route schedule points to adjust in order to mitigate such events.
The access to the final selection minute is only available to applicants.
Please check the confirmation e-mail of your application to obtain the access code.