2016
Authors
Moreira, AC; Silva, PMFD;
Publication
International Journal of Sport Management and Marketing
Abstract
In recent years, in the services market, we have witnessed a growing importance of concepts such as service quality, satisfaction, word-of-mouth and complaint behaviour. The proposed conceptual model aimed to examine the existing relationships among these dimensions in the context of health clubs. Data was collected through questionnaires and analysed using structural equations modelling (SEM) to simultaneously test all the relationships in the model. Overall, the results suggest that quality is assessed through staff, programme and facilities evaluation, and that service quality is crucial for both satisfaction and word-of-mouth generation. Customers do not complain to third parties, i.e., to external parties that are not involved, but have some influence on the service provider even when low quality is delivered or they are dissatisfied. © 2016 Inderscience Enterprises Ltd.
2016
Authors
Sousa, R; Gama, J;
Publication
ADVANCES IN INTELLIGENT DATA ANALYSIS XV
Abstract
Most data streams systems that use online Multi-target regression yield vast amounts of data which is not targeted. Targeting this data is usually impossible, time consuming and expensive. Semi-supervised algorithms have been proposed to use this untargeted data (input information only) for model improvement. However, most algorithms are adapted to work on batch mode for classification and require huge computational and memory resources. Therefore, this paper proposes an semi-supervised algorithm for online processing systems based on AMRules algorithm that handle both targeted and untargeted data and improves the regression model. The proposed method was evaluated through a comparison between a scenario where the untargeted examples are not used on the training and a scenario where some untargeted examples are used. Evaluation results indicate that the use of the untargeted examples improved the target predictions by improving the model.
2016
Authors
Vasques, F; Mirabella, O;
Publication
Industrial Communication Systems
Abstract
2016
Authors
Allison, C; Morgado, L; Pirker, J; Beck, D; Richter, J; Gütl, C;
Publication
iLRN
Abstract
2016
Authors
Duarte, M; dos Santos, FN; Sousa, A; Morais, R;
Publication
ROBOT 2015: SECOND IBERIAN ROBOTICS CONFERENCE: ADVANCES IN ROBOTICS, VOL 1
Abstract
Crop monitoring and harvesting by ground robots in steep slope vineyards is an intrinsically complex challenge, due to two main reasons: harsh conditions of the terrain and reduced time availability and unstable localization accuracy of the Global Positioning System (GPS). In this paper the use of agricultural wireless sensors as artificial landmarks for robot localization is explored. The Received Signal Strength Indication (RSSI), of Bluetooth (BT) based sensors/technology, has been characterized for distance estimation. Based on this characterization, a mapping procedure based on Histogram Mapping concept was evaluated. The results allow us to conclude that agricultural wireless sensors can be used to support the robot localization procedures in critical moments (GPS blockage) and to create redundant localization information.
2016
Authors
Abdulrahman, SM; Brazdil, P;
Publication
AutoML@ICML
Abstract
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.