Text spam messages classification using Artificial Immune System (AIS) algorithms
The problem of spam messages is quite worrying especially for mobile users because statistics show increasing issues albeit many efforts have been introduced to reduce the risk of spam. Spammers chose SMS as their main target for spamming because SMS is considered as an important communication among...
Saved in:
id |
my-usim-ddms-12621 |
---|---|
record_format |
uketd_dc |
institution |
Universiti Sains Islam Malaysia |
collection |
USIM Institutional Repository |
language |
English |
topic |
Artificial Immune System (AIS) Immune Network Theory spam messages Clonal Selection |
spellingShingle |
Artificial Immune System (AIS) Immune Network Theory spam messages Clonal Selection Nurul Fadhilah Sulaiman Text spam messages classification using Artificial Immune System (AIS) algorithms |
description |
The problem of spam messages is quite worrying especially for mobile users because statistics show increasing issues albeit many efforts have been introduced to reduce the risk of spam. Spammers chose SMS as their main target for spamming because SMS is considered as an important communication among them. Problems such as inefficient algorithm, users awareness and high risk of spam are still dominating and challenging. Besides, the varieties of SMS spam sending by spammers giving us a question on the types of messages that are mostly sent by them. Having stated the aforementioned challenges, this research focuses on the second phase which is the classification (or known as clustering). The main objectives of this research are to study the relationship between Artificial Immune System (AIS) and Biology Immune System (BIS) related to spam detection, classification and severity determination, to propose an enhance method for clustering spam messages using the combination of Clonal Selection and Immune Network Theory and lastly to conduct and evaluate the proposed algorithms. A spam management model inspired from the ideology of BIS named Integrated Mobile Spam Model (IMSM) is introduced. This model consists of three phases which are detection, classification and severity determination, and each phase uses only AIS algorithms inspired from BIS. BIS has the capability to protect and defend the body from bacteria or virus that attacks us, so this theory can be applied to the mobile phone to protect from spam messages as well. Classification is the process to cluster spam messages into several groups. By doing this phase, it helps us to identify which group of spam messages that has higher occurrence and is always sent by spammers besides can help in the severity determination phase to determine the level of danger for spam messages. A new algorithm named "Hybrid Immune Clonal Network Algorithm" (HICNA) is proposed for clustering spam messages and this algorithm is a combination of Clonal Selection and Immune Network Theory. Three phases involved in this algorithm; phase one is scanning the spam messages using common keywords while phase two is using uncommon keywords. Expert judgement is needed for the last phase to ensure all spam messages are clustered into identified groups. A number of experiments have been conducted to test the performance and validity of the algorithm using different source of datasets and also to identify its usability in the detection process. The research results show that three defined objectives were fulfilled and the proposed algorithm gives better results in clustering spam messages into several groups. In addition, it shows the capability of AIS algorithm for the clustering process. |
format |
Thesis |
author |
Nurul Fadhilah Sulaiman |
author_facet |
Nurul Fadhilah Sulaiman |
author_sort |
Nurul Fadhilah Sulaiman |
title |
Text spam messages classification using Artificial Immune System (AIS) algorithms |
title_short |
Text spam messages classification using Artificial Immune System (AIS) algorithms |
title_full |
Text spam messages classification using Artificial Immune System (AIS) algorithms |
title_fullStr |
Text spam messages classification using Artificial Immune System (AIS) algorithms |
title_full_unstemmed |
Text spam messages classification using Artificial Immune System (AIS) algorithms |
title_sort |
text spam messages classification using artificial immune system (ais) algorithms |
granting_institution |
Universiti Sains Islam Malaysia |
url |
https://oarep.usim.edu.my/bitstreams/f77273b9-0a78-437c-b32c-0596d65d549a/download https://oarep.usim.edu.my/bitstreams/f95512bd-1a97-4ad1-b01f-6762aaf79816/download https://oarep.usim.edu.my/bitstreams/eb5c3048-5efb-4982-a32d-e28a1d3173b8/download https://oarep.usim.edu.my/bitstreams/ac49b180-7324-4366-837e-d657da9677e5/download https://oarep.usim.edu.my/bitstreams/ef4e0537-c6c1-48db-8713-9e6266578c0b/download https://oarep.usim.edu.my/bitstreams/73f113ce-be68-43c6-ac6a-d10343101093/download https://oarep.usim.edu.my/bitstreams/de7aa01d-f7e7-491f-a227-77d3ff7207db/download https://oarep.usim.edu.my/bitstreams/68a993bd-444d-4c1b-b43e-fe5493eccb22/download https://oarep.usim.edu.my/bitstreams/77a567b2-338b-4a85-880a-29c22bf2046e/download |
_version_ |
1812444877656424448 |
spelling |
my-usim-ddms-126212024-05-29T20:00:43Z Text spam messages classification using Artificial Immune System (AIS) algorithms Nurul Fadhilah Sulaiman The problem of spam messages is quite worrying especially for mobile users because statistics show increasing issues albeit many efforts have been introduced to reduce the risk of spam. Spammers chose SMS as their main target for spamming because SMS is considered as an important communication among them. Problems such as inefficient algorithm, users awareness and high risk of spam are still dominating and challenging. Besides, the varieties of SMS spam sending by spammers giving us a question on the types of messages that are mostly sent by them. Having stated the aforementioned challenges, this research focuses on the second phase which is the classification (or known as clustering). The main objectives of this research are to study the relationship between Artificial Immune System (AIS) and Biology Immune System (BIS) related to spam detection, classification and severity determination, to propose an enhance method for clustering spam messages using the combination of Clonal Selection and Immune Network Theory and lastly to conduct and evaluate the proposed algorithms. A spam management model inspired from the ideology of BIS named Integrated Mobile Spam Model (IMSM) is introduced. This model consists of three phases which are detection, classification and severity determination, and each phase uses only AIS algorithms inspired from BIS. BIS has the capability to protect and defend the body from bacteria or virus that attacks us, so this theory can be applied to the mobile phone to protect from spam messages as well. Classification is the process to cluster spam messages into several groups. By doing this phase, it helps us to identify which group of spam messages that has higher occurrence and is always sent by spammers besides can help in the severity determination phase to determine the level of danger for spam messages. A new algorithm named "Hybrid Immune Clonal Network Algorithm" (HICNA) is proposed for clustering spam messages and this algorithm is a combination of Clonal Selection and Immune Network Theory. Three phases involved in this algorithm; phase one is scanning the spam messages using common keywords while phase two is using uncommon keywords. Expert judgement is needed for the last phase to ensure all spam messages are clustered into identified groups. A number of experiments have been conducted to test the performance and validity of the algorithm using different source of datasets and also to identify its usability in the detection process. The research results show that three defined objectives were fulfilled and the proposed algorithm gives better results in clustering spam messages into several groups. In addition, it shows the capability of AIS algorithm for the clustering process. Universiti Sains Islam Malaysia 2016-06 Thesis en https://oarep.usim.edu.my/handle/123456789/12621 https://oarep.usim.edu.my/bitstreams/33ecb8bb-ad49-4535-ab89-687feea79b00/download 8a4605be74aa9ea9d79846c1fba20a33 https://oarep.usim.edu.my/bitstreams/f77273b9-0a78-437c-b32c-0596d65d549a/download f31e5a226f872368aeeade722719886a https://oarep.usim.edu.my/bitstreams/f95512bd-1a97-4ad1-b01f-6762aaf79816/download 29ad08600b6f5484faf98f7e67ff451a https://oarep.usim.edu.my/bitstreams/eb5c3048-5efb-4982-a32d-e28a1d3173b8/download f62336f6e416f1b75bf042973238dd6a https://oarep.usim.edu.my/bitstreams/ac49b180-7324-4366-837e-d657da9677e5/download 62fd413498f929d4c37bd8cdb7b600f0 https://oarep.usim.edu.my/bitstreams/ef4e0537-c6c1-48db-8713-9e6266578c0b/download 821e5fa2232362ce63f8dc0f5af48214 https://oarep.usim.edu.my/bitstreams/73f113ce-be68-43c6-ac6a-d10343101093/download 6be69ba809716d7a4beabf57f2d849f9 https://oarep.usim.edu.my/bitstreams/de7aa01d-f7e7-491f-a227-77d3ff7207db/download cb7cfd8c1370483248bc9826fc23c010 https://oarep.usim.edu.my/bitstreams/68a993bd-444d-4c1b-b43e-fe5493eccb22/download 9b1c4bd2b1aca6ff0da0084d6687436f https://oarep.usim.edu.my/bitstreams/77a567b2-338b-4a85-880a-29c22bf2046e/download 751a25d8e166c4d0e78272880d70d858 https://oarep.usim.edu.my/bitstreams/ab544437-c2f3-47bf-abab-ca1d6f961c34/download 68b329da9893e34099c7d8ad5cb9c940 https://oarep.usim.edu.my/bitstreams/9d0769ba-6c6f-465c-8115-33fd4e2a7bbe/download 429079e52f342c49301a02e207bfde06 https://oarep.usim.edu.my/bitstreams/b56bbd25-7498-4acc-876d-7eaaa09f30f3/download 429079e52f342c49301a02e207bfde06 https://oarep.usim.edu.my/bitstreams/ef9ea488-2bc5-4c53-98f8-6c114dac83b0/download 91ce7a13557f30697b7729d573c57ace https://oarep.usim.edu.my/bitstreams/402a8de6-4c4e-4365-83c7-047eedf22948/download 67e866c735744ec6037b77b623ee022d https://oarep.usim.edu.my/bitstreams/bc675f91-32c9-4877-89f6-e1705c35864c/download 359c989e7470416468f7ad84d3dda8c9 https://oarep.usim.edu.my/bitstreams/493a72f9-4993-401e-9120-219043e3df41/download 7d652a2ff5b9aa6913ecb65cbbd9f325 https://oarep.usim.edu.my/bitstreams/def11a93-6c68-404d-9775-6af15d6a2156/download cc9067c2ee470dc248b14b194209a34e https://oarep.usim.edu.my/bitstreams/8400a0c9-958b-4ada-a68f-fc960c8bce2e/download bf17417a9631c3d4f7ea348cc4101d7a Artificial Immune System (AIS) Immune Network Theory spam messages Clonal Selection |