Abstract
AbstractMathematics, despite being the foundation of computer science, is nowadays often considered a totally separate subject. The fact that many jobs in computer science do not explicitly require any specific mathematical knowledge posed questions about the importance of mathematics within computer science undergraduate curricula. In many educational systems, a prior high school knowledge of mathematics is often not a mandatory requirement to be enrolled into a degree of computer science. On the other hand, several studies report that mathematics is important to computer scientists since it provides essential analytical and critical skills and since many professional and research tasks in computer science require an in-depth understanding of mathematical concepts. From this assumption, this article proposes an analysis of the cohort of computer science’ students, with a specific reference to British Universities, and identifies some challenges that lecturers of mathematical subjects normally face. On the basis of this analysis this article proposes two teaching techniques to promote effective learning. The proposed techniques aim at addressing the diversity of cohorts in terms of mathematical background and skepticism from part of the cohort of students to consider mathematics as an essential element of their education. Numerical results indicate the validity and effectiveness of the proposed teaching techniques.
Publisher
Springer Science and Business Media LLC
Reference50 articles.
1. Al-Shammari Z. Using evidence-based cognitive teaching strategies with effect size in inclusion classrooms in kuwait. Saudi J Spec Educ. 2019;10
2. Al-Shammari Z, Faulkner PE, Forlin C. Theories-based inclusive education practices. Educ Q Rev. 2019;2:408–14.
3. Benton L, Hoyles C, Kalas I, Noss R. Bridging primary programming and mathematics: some findings of design research in england. Digit Exp Math Educ. 2017;3:115–38.
4. Blum C, Chiong R, Clerc M, Jong KD, Michalewicz Z, Neri F, Weise T. Evolutionary optimization. In: R. Chiong, T. Weise, Z. Michalewicz (eds.) Variants of Evolutionary Algorithms for Real-World Applications. Berlin, Heidelberg
5. Boavida F, Praitano A, Lioudakis GV. Topical issue on privacy, data protection, and digital identity. SN Comput. Sci. 2020;1(5):250.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献