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Analysing the Impact of Machine Learning to Model Subjective Mental Workload: A Case Study in Third-Level Education.

, and . H-WORKLOAD, volume 1012 of Communications in Computer and Information Science, page 92-111. Springer, (2018)

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Analysing the Impact of Machine Learning to Model Subjective Mental Workload: A Case Study in Third-Level Education., and . H-WORKLOAD, volume 1012 of Communications in Computer and Information Science, page 92-111. Springer, (2018)Learning a Metric Space for Neighbourhood Topology Estimation: Application to Manifold Learning., , and . ACML, volume 29 of JMLR Workshop and Conference Proceedings, page 341-356. JMLR.org, (2013)Generalization in Unsupervised Learning., and . ECML/PKDD (1), volume 9284 of Lecture Notes in Computer Science, page 300-317. Springer, (2015)An Exponential Tail Bound for Lq Stable Learning Rules. Application to k-Folds Cross-Validation., and . ISAIM, (2018)An Exponential Efron-Stein Inequality for Lq Stable Learning Rules., and . ALT, volume 98 of Proceedings of Machine Learning Research, page 31-63. PMLR, (2019)Modified Divergences for Gaussian Densities., and . SSPR/SPR, volume 7626 of Lecture Notes in Computer Science, page 426-436. Springer, (2012)On the structure of hidden Markov models., , and . Pattern Recognit. Lett., 25 (8): 923-931 (2004)The Minimum Volume Ellipsoid Metric., and . DAGM-Symposium, volume 4713 of Lecture Notes in Computer Science, page 335-344. Springer, (2007)Regularized Minimum Volume Ellipsoid Metric for Query-Based Learning., and . ICMLA, page 188-193. IEEE Computer Society, (2008)An Exponential Tail Bound for the Deleted Estimate., and . AAAI, page 3143-3150. AAAI Press, (2019)