Störrle, H., M. R. V. Chaudron, V. Amaral, and M. Goulão,
"First International Workshop on Human Factors in Modeling (HuFaMo 2015) @ MODELS 2015 - Preface",
First International Workshop on Human Factors in Modeling (HuFaMo 2015) @ MODELS 2015, Ottawa, Canada, 28 Sep., 2015.
Silva, L., A. Moreira, J. Araújo, C. Gralha, M. Goulão, and V. Amaral,
"Exploring Views for Goal-Oriented Requirements Models",
35th International Conference on Conceptual Modeling, ER2016, Gifu, Japan, 14-17 Nov., 2016.
Abstracthttp://er2016.cs.titech.ac.jp/
Requirements documents and models need to be used by many stakeholders with dierent technological prociency, during software development. Each stakeholder may need to understand the entire (or simply part of the) requirements artifacts. To empower those stakeholders, views of the requirements should be congurable to their particular needs. Information visualization techniques may help in this process. In this paper, we propose dierent views aimed at highlighting information that is relevant for a particular stakeholder, helping him to query requirements artifacts. We oer three kinds of visualization capturing language and domain elements, while providing a gradual model overview: the big picture view, the syntax-based view, and the concern-based view. We instantiate these views with i* models and introduce an implementation prototype in the iStarLab tool.
Santos, M., C. Gralha, M. Goulão, J. Araújo, A. Moreira, and J. Cambeiro,
"What is the Impact of Bad Layout in the Understandability of Social Goal Models?",
24th IEEE International Conference on Requirements Engineering, Beijing, China, IEEE, 12-16, Sep., 2016.
AbstractThe i* community has published guidelines, including model layout guidelines, for the construction of models. Our goal is to evaluate the effect of the layout guidelines on the i* novice stakeholders’ ability to understand and review i* models. We conducted a quasi-experiment where participants were given two understanding and two reviewing tasks. Both tasks involved a model with a bad layout and another model following the i* layout guidelines. We evaluated the impact of layouts by combining the success level in those tasks and the required effort to accomplish them. Effort was assessed using time, perceived complexity (with NASA TLX), and eye-tracking data. Participants were more successful in understanding than in reviewing tasks. However, we found no statistically significant difference in the success, time taken, or perceived complexity, between tasks conducted with models with a bad layout and models with a good layout. Most participants had little to no prior knowledge in i*, making them more representative of stakeholders with no requirements engineering expertise. They were able to understand the models fairly well after a short tutorial, but struggled when reviewing models. Adherence to the existing i* layout guidelines did not significantly impact i* model understanding and reviewing performance.
Sabino, A., Armanda Rodrigues, M. Goulão, and J. Gouveia,
"Indirect Keyword Recommendation",
International Conference on Intelligent Agent Technology, WIC 2014, Warsaw, Poland, IEEE/WIC/ACM, 11-14 August, 2014.
AbstractHelping users to find useful contacts or potentially interesting subjects is a challenge for social and productive
networks. The evidence of the content produced by users must be considered in this task, which may be simplified by the use of the meta-data associated with the content, i.e., the categorization supported by the network – descriptive keywords, or tags. In this paper we present a model that enables keyword discovery
methods through the interpretation of the network as a graph, solely relying on keywords that categorize or describe productive items. The model and keyword discovery methods presented in this paper avoid content analysis, and move towards a generic approach to the identification of relevant interests and, eventually,
contacts. The evaluation of the model and methods is executed by two experiments that perform frequency and classification analyses over the Flickr network. The results show that we can efficiently recommend keywords to users.