WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN)
This paper aims to investigate the window size threshold of the incremental update strategy in K-Nearest Neighbours (KNN) for brainprint identification. Electroencephalogram (EEG) signals are low signal-to-noise ratio and non-stationary. Incremental learning is good in handling dynamic applications...
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Online Access: | http://ir.unimas.my/id/eprint/39177/1/WINDOW%20SIZE%20-%20Copy.pdf http://ir.unimas.my/id/eprint/39177/ http://www.arpnjournals.org/jeas/research_papers/rp_2020/jeas_0920_8305.pdf |
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my.unimas.ir.391772022-09-29T02:13:50Z http://ir.unimas.my/id/eprint/39177/ WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN) Siaw Hong, Liew Yun Huoy, Choo Yin Fen, Low Shin Horng, Chong QA75 Electronic computers. Computer science This paper aims to investigate the window size threshold of the incremental update strategy in K-Nearest Neighbours (KNN) for brainprint identification. Electroencephalogram (EEG) signals are low signal-to-noise ratio and non-stationary. Incremental learning is good in handling dynamic applications. It does not require complete training examples; instead it is able to adapt dynamic changes to gradually form the target concept. KNN implements First-In-FirstOut (FIFO) strategy to guide the incremental learning updates. The FIFO strategy tends to construct the target concept from the training objects according to availability orders. If the number of training objects exceeds the predefined window size threshold, then the FIFO strategy remove the earliest available object. The step size of training pool is linear increased by 10%, from 20% up to 90%. The classification results showed improvement when the window size threshold is increasing. The optimum results recorded at the window size threshold of 60%, with 0.875 in accuracy, 0.887 in precision and 0.878 in f-measure. The degradation of the classification performance after 60% showed the FIFO incremental update strategy is less promising. Thus, future work should focus on the incremental update strategy for selecting the representative and distinct objects to improve the performance of brainprint identification. Asian Research Publishing Network (ARPN) 2020 Article PeerReviewed text en http://ir.unimas.my/id/eprint/39177/1/WINDOW%20SIZE%20-%20Copy.pdf Siaw Hong, Liew and Yun Huoy, Choo and Yin Fen, Low and Shin Horng, Chong (2020) WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN). ARPN Journal of Engineering and Applied Sciences, 15 (17). pp. 1897-1901. ISSN 1819-6608 http://www.arpnjournals.org/jeas/research_papers/rp_2020/jeas_0920_8305.pdf |
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QA75 Electronic computers. Computer science Siaw Hong, Liew Yun Huoy, Choo Yin Fen, Low Shin Horng, Chong WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN) |
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This paper aims to investigate the window size threshold of the incremental update strategy in K-Nearest Neighbours (KNN) for brainprint identification. Electroencephalogram (EEG) signals are low signal-to-noise ratio and
non-stationary. Incremental learning is good in handling dynamic applications. It does not require complete training
examples; instead it is able to adapt dynamic changes to gradually form the target concept. KNN implements First-In-FirstOut (FIFO) strategy to guide the incremental learning updates. The FIFO strategy tends to construct the target concept from the training objects according to availability orders. If the number of training objects exceeds the predefined window size threshold, then the FIFO strategy remove the earliest available object. The step size of training pool is linear increased by 10%, from 20% up to 90%. The classification results showed improvement when the window size threshold is increasing. The optimum results recorded at the window size threshold of 60%, with 0.875 in accuracy, 0.887 in precision and 0.878 in f-measure. The degradation of the classification performance after 60% showed the FIFO incremental update strategy is less promising. Thus, future work should focus on the incremental update strategy for selecting the representative and distinct objects to improve the performance of brainprint identification. |
format |
Article |
author |
Siaw Hong, Liew Yun Huoy, Choo Yin Fen, Low Shin Horng, Chong |
author_facet |
Siaw Hong, Liew Yun Huoy, Choo Yin Fen, Low Shin Horng, Chong |
author_sort |
Siaw Hong, Liew |
title |
WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT
IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN) |
title_short |
WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT
IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN) |
title_full |
WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT
IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN) |
title_fullStr |
WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT
IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN) |
title_full_unstemmed |
WINDOW SIZE THRESHOLD ANALYSIS FOR BRAINPRINT
IDENTIFICATION USING INCREMENTAL K-NEAREST NEIGHBOUR (KNN) |
title_sort |
window size threshold analysis for brainprint
identification using incremental k-nearest neighbour (knn) |
publisher |
Asian Research Publishing Network (ARPN) |
publishDate |
2020 |
url |
http://ir.unimas.my/id/eprint/39177/1/WINDOW%20SIZE%20-%20Copy.pdf http://ir.unimas.my/id/eprint/39177/ http://www.arpnjournals.org/jeas/research_papers/rp_2020/jeas_0920_8305.pdf |
_version_ |
1745566055526301696 |