Students who wish to learn a specific skill have increasing access to a growing number of online courses and open-source educational repositories of instructional tools, including videos, slides, and exercises. Navigating these tools is time consuming and the search itself can hinder the learning of the skill. Educators are hence interested in aiding students by selecting the optimal content sequence for individual learners, specifically which skill one should learn next and which material one should use to study. Such adaptive selection would rely on preknowledge of how the learners’ and the instructional tools’ characteristics jointly affect the probability of acquiring a certain skill. Building upon previous research on Latent Transition...
This work is a part of a larger project that investigates how high school students learn scientific ...
In this paper, a Bayesian-Network-based model isproposed to optimize the Global Adaptive e-LearningP...
Recent work on intelligent tutoring systems has used Bayesian networks to model students ’ acquisiti...
Chapter 1: Cognitive diagnosis models (CDMs) are restricted latent class models designed to assess t...
This paper introduces Hidden Markov Models for the analysis of authentic learning data from an appli...
Unlike the summative assessment, that points to grade the learning outcome of a student, the formati...
This project deals with the application of data analytics to education, particularly students’ knowl...
A key need in cognitive training interventions is to personalize task difficulty to each user and to...
To better understand the self-regulated learning process in online learning environments, this resea...
Students interacting with educational software generate data on their use of soft-ware assistance an...
In the proposed work, hidden Markov model (HMM) has been deployed to improve the learner's performan...
In this paper we present an audacious solution based on Bayesian networks and educational approach f...
The current study examines the performance of a Bayesian Inference Network (BIN) for modeling Learni...
This dissertation proposes longitudinal growth curve cognitive diagnosis models (GC-CDM) to incorpor...
E-learning assessments are becoming a common educational medium to instruct fine-grained skills in m...
This work is a part of a larger project that investigates how high school students learn scientific ...
In this paper, a Bayesian-Network-based model isproposed to optimize the Global Adaptive e-LearningP...
Recent work on intelligent tutoring systems has used Bayesian networks to model students ’ acquisiti...
Chapter 1: Cognitive diagnosis models (CDMs) are restricted latent class models designed to assess t...
This paper introduces Hidden Markov Models for the analysis of authentic learning data from an appli...
Unlike the summative assessment, that points to grade the learning outcome of a student, the formati...
This project deals with the application of data analytics to education, particularly students’ knowl...
A key need in cognitive training interventions is to personalize task difficulty to each user and to...
To better understand the self-regulated learning process in online learning environments, this resea...
Students interacting with educational software generate data on their use of soft-ware assistance an...
In the proposed work, hidden Markov model (HMM) has been deployed to improve the learner's performan...
In this paper we present an audacious solution based on Bayesian networks and educational approach f...
The current study examines the performance of a Bayesian Inference Network (BIN) for modeling Learni...
This dissertation proposes longitudinal growth curve cognitive diagnosis models (GC-CDM) to incorpor...
E-learning assessments are becoming a common educational medium to instruct fine-grained skills in m...
This work is a part of a larger project that investigates how high school students learn scientific ...
In this paper, a Bayesian-Network-based model isproposed to optimize the Global Adaptive e-LearningP...
Recent work on intelligent tutoring systems has used Bayesian networks to model students ’ acquisiti...