Data Mining to Identify Project Management Strategies in Learning Environments

One of the most important organizational developments in recent years has been the significant growth of project work in different economic sectors and industries (Winter, Smith, Morris, & Cicmil, 2006). Thus, projects have become a key strategic working form. Further, it has been shown that all industries can benefit from project-based working (OPSR, 2003). No longer just a sub-discipline of engineering, the management of projects -including program management and portfolio managementis now the dominant model in many organizations for strategy implementation, business transformation, continuous improvement and new product development (Winter et al., 2006). However, there is growing recognition that different types of projects require different approaches to their management (Müller & Turner, 2007). Furthermore, the increasing globalization of projects and project management adds intercultural challenges for project managers (Müller & Turner, 2004). There is no doubt that management’s configuration of projects affects the project’s evolution. There are also factors like virtual teamwork and team building processes that are relevant to that evolution. Since effectiveness in managing projects depends on these factors, the authors conducted this research to determine whether project performance varies according to project management and other factors. Thus, with a view to complementing other research to link project management to project success (Din, Abd-Hamid, & Bryde, 2011; Mir & Pinnington, 2014), this work considers factors such as virtual team configuration, team composition, knowledge competence, policy and strategy, project life monitoring and the level of detail implemented in managing projects that are undertaken in the learning process. The data for this research was provided by an educational framework that was specifically designed to facilitate the learning experience of project management engineering students. The main purpose of this learning experience was to highlight how to move from simply learning content by rote to understanding, discussing and sharing (Alba-Elías, González-Marcos, & Ordieres-Meré, 2014). In this case, practitioners learned and applied by means of an experimental learning approach, a defined project management methodology that enables them to manage projects better. Data mining and data analytics were used in this work to identify and understand the relationships between project performance and the analyzed factors. Data mining is widely applied in the educational area to predict students’ performance Ana González-Marcos Universidad de La Rioja, Spain

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