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Improving student learning through multidisciplinary perspectives

journal contribution
posted on 2024-11-01, 13:30 authored by Chandana Watagodakumbura
This paper looks at improving student learning mainly focusing on important practices related pedagogy, psychology and neuroscience. The author highlights the need that we, as educators, pay attention to learners individual psychological and neurological characteristics when we develop curricular and present them to learners. For example, we may identify whether the preferred learning style for learners is visual spatial or auditory sequential. Similarly, we may identify whether the learners exhibit overexcitabilities, such as emotional, imaginational and intellectual. Differentiation of these psychological and neurological characteristics enable us be inclusive in our practices; for example, we will be able to meet the needs of highly sensitive gifted learners in the mainstream education system, instead of requiring special programs. We cannot expect the presence of idealistic learners possessing extreme visual spatial and auditory sequential skills at the same time. From a pedagogical point of view, we need to stress on higher-order learning by having assessment targeting higher-order learning. One of the important aspects when targeting higher-order learning is the timing aspect; that is how much time we spend on elaborating the most important concepts in the subject area as well as the time allocated for assessment, considering that human brain is a parallel processor, not a sequential operator such as a machine, or robot.

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  1. 1.
    ISSN - Is published in 21656266

Journal

Journal of Teaching and Education

Volume

1

Issue

5

Start page

261

End page

267

Total pages

7

Publisher

International Journal of Arts & Sciences

Place published

Rhode Island, United States

Language

English

Copyright

© 2012 University Publications.net

Former Identifier

2006038885

Esploro creation date

2020-06-22

Fedora creation date

2013-02-19

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