TY  - JOUR
T1  - Slow and Fast Eeg Waves Analysis for Kolb&#146;s Learning Style Classification
AU - bin Abdul Rashid, Nazre AU - Nasir bin Taib, Mohd. AU - bin Lias, Sahrim AU - bin Sulaiman, Norizam AU - binti Murat, Zunairah 
JO  - Journal of Engineering and Applied Sciences
VL  - 12
IS  - 3
SP  - 508
EP  - 512
PY  - 2017
DA  - 2001/08/19
SN  - 1816-949x
DO  - jeasci.2017.508.512
UR  - https://makhillpublications.co/view-article.php?doi=jeasci.2017.508.512
KW  - EEG
KW  -learning style
KW  -classification
KW  -summative
KW  -demonstrated
AB  - This research is meant to classify learners based on the combination of Kolb&#146;s learning style
information and Electroencephalogram (EEG) dataset. Slow waves and fast waves EEG of a learners (N = 131)
were captured using the waverider pro hardware and processed using the accompanied software called
waveware to generate the summative EEG as a final dataset. Next, the learners LS were determined using Kolb&#146;s
Learning Style Inventory (KLSI) which clustered them into the LS of diverger assimilator, converger and
Accommodator respectively. The SPSS 16 Modules of 2-steps cluster analysis is used to analyze the summative
EEG dataset of beta and alpha (fast waves); theta and delta (slow waves). As to establish the LS classification
on both waves condition. In term of single EEG band, all LS are correctly clustered (100%) in a homogenous
group notwithstanding fast wave or slow wave EEG. On the other hand, in combined EEG bands, both waves
group had demonstrated a best classification (100%) for LS diverger. Concurrently, best classification (100%)
also obtained for LS accommodator but only in EEG Fast wave condition. Based on the overall findings, the fast
wave EEG is found to be a better classifier for Kolb&#146;s LS compared to the slow wave EEG. The research findings
could be utilized to impart further attention and focus on Beta and Alpha EEG waves in order to infer the
learner&#146;s learning preference based on KLSI.
ER  - 