The collection and selection of the data used in learning analytics applications deserve more attention. Optimally, selection of data should be guided by pedagogical purposes instead of data availability. Using design science research methodology, we designed an artifact to collect time-series data on students' self-regulated learning and conceptual thinking. Our artifact combines curriculum data, concept mapping, and structured learning diaries. We evaluated the artifact in a case study, verifying that it provides relevant data, requires a limited amount of effort from students, and works in different educational contexts. Combined with learning analytics applications and interventions, our artifact provides possibilities to add value for students, teachers, and academic leaders.
Notes for Practice• Data about constructs related to self-regulated learning, such as motivation, emotion, and metacognitive experiences, is highly relevant in learning analytics applications.• While this data is difficult to capture automatically, learning diaries can gather process data about students' internal states.• The main contribution of this article is to present a methodology in which concept maps are used as learning diaries to gather meaningful data for learning analytics applications.• In the future, this method of data gathering can be combined with different kinds of learning analytics interventions, including personalized feedback at scale.