MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS
Throughout the years, mobile devices such as tablets, smartphones and computers are extremely widespread because of the development of modern technology. By using these devices, users all over the globe can easily accessed a huge range of applications from both commercial and private use. Malware de...
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Format: | Final Year Project Report |
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Universiti Malaysia Sarawak(UNIMAS)
2018
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Online Access: | http://ir.unimas.my/id/eprint/30928/1/MENGKAJI%20TAHAP%20KESEDARAN%20METAKOGNISI%2024pgs.pdf http://ir.unimas.my/id/eprint/30928/4/Siti%20Noraini%20ft.pdf http://ir.unimas.my/id/eprint/30928/ |
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my.unimas.ir.309282024-08-13T07:28:31Z http://ir.unimas.my/id/eprint/30928/ MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS SITI NORAINI, LABU BF Psychology Throughout the years, mobile devices such as tablets, smartphones and computers are extremely widespread because of the development of modern technology. By using these devices, users all over the globe can easily accessed a huge range of applications from both commercial and private use. Malware detection is an important aspect of software protection. As a matter of fact, the development of malware had begun soaring as more and more unknown malware were discovered. Malware is a common term used to describe malicious software that can induced security threats to any devices and also to the Internet network. In this study, a malware detection that is based on Deep Learning approach that utilize the Long-Short Term Memory Networks (LSTM) model is utilized. The chosen approach will learn and train itself by using the features that are needed for malware detection using a large data sets for evaluating the trained algorithm. The performance of the model is evaluated by comparing it with the Back-Propagation (BP) model. Results that was achieved by conducting the necessary experiments proved that the LSTM model is capable to detect malware with the error loss of 0.6 and achieved an accuracy of 93.60% compared to BP with an accuracy of 82.857%. Universiti Malaysia Sarawak(UNIMAS) 2018 Final Year Project Report NonPeerReviewed text en http://ir.unimas.my/id/eprint/30928/1/MENGKAJI%20TAHAP%20KESEDARAN%20METAKOGNISI%2024pgs.pdf text en http://ir.unimas.my/id/eprint/30928/4/Siti%20Noraini%20ft.pdf SITI NORAINI, LABU (2018) MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS. [Final Year Project Report] (Unpublished) |
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BF Psychology SITI NORAINI, LABU MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS |
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Throughout the years, mobile devices such as tablets, smartphones and computers are extremely widespread because of the development of modern technology. By using these devices, users all over the globe can easily accessed a huge range of applications from both commercial and private use. Malware detection is an important aspect of software protection. As a matter of fact, the development of malware had begun soaring as more and more unknown malware were discovered. Malware is a common term used to describe malicious software that
can induced security threats to any devices and also to the Internet network. In this study, a malware detection that is based on Deep Learning approach that utilize the Long-Short Term Memory Networks (LSTM) model is utilized. The chosen approach will learn and train itself
by using the features that are needed for malware detection using a large data sets for evaluating
the trained algorithm. The performance of the model is evaluated by comparing it with the Back-Propagation (BP) model. Results that was achieved by conducting the necessary experiments proved that the LSTM model is capable to detect malware with the error loss of 0.6 and achieved an accuracy of 93.60% compared to BP with an accuracy of 82.857%. |
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Final Year Project Report |
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SITI NORAINI, LABU |
author_facet |
SITI NORAINI, LABU |
author_sort |
SITI NORAINI, LABU |
title |
MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS |
title_short |
MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS |
title_full |
MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS |
title_fullStr |
MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS |
title_full_unstemmed |
MENGKAJI TAHAP KESEDARAN METAKOGNISI PELAJAR TAHUN SATU SAINS KOGNITIF DI UNIMAS |
title_sort |
mengkaji tahap kesedaran metakognisi pelajar tahun satu sains kognitif di unimas |
publisher |
Universiti Malaysia Sarawak(UNIMAS) |
publishDate |
2018 |
url |
http://ir.unimas.my/id/eprint/30928/1/MENGKAJI%20TAHAP%20KESEDARAN%20METAKOGNISI%2024pgs.pdf http://ir.unimas.my/id/eprint/30928/4/Siti%20Noraini%20ft.pdf http://ir.unimas.my/id/eprint/30928/ |
_version_ |
1808981478037520384 |
score |
13.211869 |