TY - CHAP TI - A Critical Perspective on Learning Analytics and Educational Data Mining AU - Kop, Rita AU - Fournier, Helene AU - Durand, Guillaume T2 - The Handbook of Learning Analytics A2 - Lang, Charles A2 - Siemens, George A2 - Wise, Alyssa Friend A2 - Gaševic, Dragan AB - In our last paper on educational data mining (EDM) and learning analytics (LA; Fournier, Kop & Durand, 2014), we concluded that publications about the usefulness of quantitative and qualitative analysis tools were not yet available and that further research would be helpful to clarify if they might help learners on their self-directed learning journey. Some of these publications have now materialized; however, replicating some of the research described met with disappointing results. In this chapter, we take a critical stance on the validity of EDM and LA for measuring and claiming results in educational and learning settings. We will also report on how EDM might be used to show the fallacies of empiri- cal models of learning. Other dimensions that will be explored are the human factors in learning and their relation to EDM and LA, and the ethics of using “Big Data” in research in open learning environments. CY - Alberta, Canada DA - 2017/// PY - 2017 ET - 1 SP - 319 EP - 326 PB - Society for Learning Analytics Research (SoLAR) SN - 978-0-9952408-0-3 UR - http://solaresearch.org/hla-17/hla17-chapter1 ER -