Feature selection using chi square to improve attack detection classification in IoT network: work in progress
To maintain network security, Intrusion Detection System (IDS) is needed to detect anomaly and attack. Designing proper IDS requires accurate model. This paper proposes a model, which consists of statistical extraction, feature selection, dataset clustering, classification, and performance measureme...
Saved in:
Main Authors: | , , , , , , , |
---|---|
Format: | Conference or Workshop Item |
Published: |
2022
|
Subjects: | |
Online Access: | http://eprints.utm.my/id/eprint/99402/ http://dx.doi.org/10.23919/EECSI56542.2022.9946621 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Universiti Teknologi Malaysia |
id |
my.utm.99402 |
---|---|
record_format |
eprints |
spelling |
my.utm.994022023-02-23T04:41:15Z http://eprints.utm.my/id/eprint/99402/ Feature selection using chi square to improve attack detection classification in IoT network: work in progress Saputra Elsi, Zulhipni Reno Stiawan, Deris Oklilas, Ahmad Fali Susanto, Susanto Kurniabudi, Kurniabudi Kunang, Yesi Novaria Idris, Mohd. Yazid Budiarto, Rahmat QA75 Electronic computers. Computer science To maintain network security, Intrusion Detection System (IDS) is needed to detect anomaly and attack. Designing proper IDS requires accurate model. This paper proposes a model, which consists of statistical extraction, feature selection, dataset clustering, classification, and performance measurement. Experiments on MQTT-IOT-IDS2020 dataset which contains Normal, scan A, scans U, Sparta and mqttbruteforce are conducted. The dataset is statistically extracted using Bidirectional-based features packet header feature with 37 features. Chi square algorithm is selected for performing feature extraction process. 10 relevant and best features are selected and ranked into 5-subsets and 10-subset feature. Three dataset splitting into testing data and training data of 90%:10%, 70%:30% and 50%:50% are created. Binary classification using k-Nearest Neighbor (KNN) and Adaboost algorithms are performed. The experimental results show accuracy level above 99% for all scenarios, with Adaboost algorithm outperforms k-Nearest Neighbor algorithm. 2022 Conference or Workshop Item PeerReviewed Saputra Elsi, Zulhipni Reno and Stiawan, Deris and Oklilas, Ahmad Fali and Susanto, Susanto and Kurniabudi, Kurniabudi and Kunang, Yesi Novaria and Idris, Mohd. Yazid and Budiarto, Rahmat (2022) Feature selection using chi square to improve attack detection classification in IoT network: work in progress. In: 9th International Conference on Electrical Engineering, Computer Science and Informatics, EECSI 2022, 6 October 2022 - 7 October 2022, Jakarta, Indonesia. http://dx.doi.org/10.23919/EECSI56542.2022.9946621 |
institution |
Universiti Teknologi Malaysia |
building |
UTM Library |
collection |
Institutional Repository |
continent |
Asia |
country |
Malaysia |
content_provider |
Universiti Teknologi Malaysia |
content_source |
UTM Institutional Repository |
url_provider |
http://eprints.utm.my/ |
topic |
QA75 Electronic computers. Computer science |
spellingShingle |
QA75 Electronic computers. Computer science Saputra Elsi, Zulhipni Reno Stiawan, Deris Oklilas, Ahmad Fali Susanto, Susanto Kurniabudi, Kurniabudi Kunang, Yesi Novaria Idris, Mohd. Yazid Budiarto, Rahmat Feature selection using chi square to improve attack detection classification in IoT network: work in progress |
description |
To maintain network security, Intrusion Detection System (IDS) is needed to detect anomaly and attack. Designing proper IDS requires accurate model. This paper proposes a model, which consists of statistical extraction, feature selection, dataset clustering, classification, and performance measurement. Experiments on MQTT-IOT-IDS2020 dataset which contains Normal, scan A, scans U, Sparta and mqttbruteforce are conducted. The dataset is statistically extracted using Bidirectional-based features packet header feature with 37 features. Chi square algorithm is selected for performing feature extraction process. 10 relevant and best features are selected and ranked into 5-subsets and 10-subset feature. Three dataset splitting into testing data and training data of 90%:10%, 70%:30% and 50%:50% are created. Binary classification using k-Nearest Neighbor (KNN) and Adaboost algorithms are performed. The experimental results show accuracy level above 99% for all scenarios, with Adaboost algorithm outperforms k-Nearest Neighbor algorithm. |
format |
Conference or Workshop Item |
author |
Saputra Elsi, Zulhipni Reno Stiawan, Deris Oklilas, Ahmad Fali Susanto, Susanto Kurniabudi, Kurniabudi Kunang, Yesi Novaria Idris, Mohd. Yazid Budiarto, Rahmat |
author_facet |
Saputra Elsi, Zulhipni Reno Stiawan, Deris Oklilas, Ahmad Fali Susanto, Susanto Kurniabudi, Kurniabudi Kunang, Yesi Novaria Idris, Mohd. Yazid Budiarto, Rahmat |
author_sort |
Saputra Elsi, Zulhipni Reno |
title |
Feature selection using chi square to improve attack detection classification in IoT network: work in progress |
title_short |
Feature selection using chi square to improve attack detection classification in IoT network: work in progress |
title_full |
Feature selection using chi square to improve attack detection classification in IoT network: work in progress |
title_fullStr |
Feature selection using chi square to improve attack detection classification in IoT network: work in progress |
title_full_unstemmed |
Feature selection using chi square to improve attack detection classification in IoT network: work in progress |
title_sort |
feature selection using chi square to improve attack detection classification in iot network: work in progress |
publishDate |
2022 |
url |
http://eprints.utm.my/id/eprint/99402/ http://dx.doi.org/10.23919/EECSI56542.2022.9946621 |
_version_ |
1758950356827504640 |