01797nas a2200241 4500000000100000000000100001008004100002260001200043653002300055653003600078653003200114653002200146653001800168100002200186700002500208700002500233245010300258856007900361300001000440490000600450520108500456022001401541 2022 d c12/202210aAcademic Analytics10aAutomatic Course Classification10aLearning Management Systems10aRule-based System10aExpert System1 aLuisa M. Regueras1 aMaría Jesús Verdú1 aJuan-Pablo de Castro00aA Rule-Based Expert System for Teachers’ Certification in the Use of Learning Management Systems uhttps://www.ijimai.org/journal/sites/default/files/2022-11/ijimai7_7_8.pdf a75-810 v73 aIn recent years and accelerated by the arrival of the COVID-19 pandemic, Learning Management Systems (LMS) are increasingly used as a complement to university teaching. LMS provide an important number of resources and activities that teachers can freely select to complement their teaching, which means courses with different usage patterns difficult to characterize. This study proposes an expert system to automatically classify courses and certify teachers’ LMS competence from LMS logs. The proposed system uses clustering to stablish the classification scheme. From the output of this algorithm, it defines the rules used to classify courses. Data registered from a university virtual campus with 3,303 courses and two million interactive events have been used to obtain the classification scheme and rules. The system has been validated against a group of experts. Results show that it performs successfully. Therefore, it can be concluded that the system can automatically and satisfactorily evaluate and certify the teachers’ LMS competence evidenced in their courses. a1989-1660