School of Business and Technology London is dedicated to offering higher and professional education courses for students worldwide through Blended and Online Learning. We deliver programmes and transform careers worldwide by offering immersive learning experiences.
Home tuition learning often leads to enhanced motivation and engagement among students. The personalized attention and encouragement from tutors boost students' confidence and self-esteem, motivating them to put in their best effort and achieve academic success. Additionally, the ability to progress at their own pace and receive recognition for their achievements instills a sense of pride and satisfaction, fueling further motivation and dedication towards their studies.
F. Decortis, A. Rizzo, and B. Saudelli. Interacting with Computers, 15 (6):
801 - 830(2003)From Computer Artefact to Instrument for Mediated Activity .Part 2 Learning Environments.
P. Rabardel, and G. Bourmaud. Interacting with Computers, 15 (5):
665 - 691(2003)From Computer Artefact to Instrument for Mediated Activity.Part 1 Organizational Issues.
I. Mani, M. Verhagen, B. Wellner, C. Lee, and J. Pustejovsky. ACL-44: Proceedings of the 21st International Conference on Computational Linguistics and the 44th annual meeting of the Association for Computational Linguistics, page 753--760. Morristown, NJ, USA, Association for Computational Linguistics, (2006)
P. Cimiano, and J. Völker. Proceedings of the International Conference on Recent Advances in Natural Language Processing (RANLP), page 166-172. Borovets, Bulgaria, INCOMA Ltd., (September 2005)
N. Nejati, P. Langley, and T. Konik. ICML '06: Proceedings of the 23rd international conference on Machine learning, page 665--672. New York, NY, USA, ACM, (2006)
M. Chatti, M. Jarke, and D. Frosch-Wilke. International Journal of Knowledge and Learning 2007, 3 (4/5):
404-420(2007)Guter Übersichtsartikel zu Wissensmanagement und E-Learning.
S. Braun, and A. Schmidt. Proceedings of I-KNOW 2006, Special Track on Integrating Working
and Learning, page 429-436. Berlin Heidelberg, Germany, Springer-Verlag, (6-8 September 2006)
J. Werfel, X. Xie, and H. Seung. In, MIT Press, (2003)Discussion of learning curves for stochastic gradient descent.
Besides gradient based approaches, the paper shortly describes (with additional references) weight perturbation and node perturbation approaches..