Optimizing malicious website prediction: An advanced XGBoost-based machine learning model
<p dir="ltr">In the substantial area of the Internet, some websites can be quite harmful and troublesome for both individuals and businesses. Our methods for identifying and forecasting these malicious websites are not always reliable; they can be slow and inaccurate. What if you had...
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| Main Author: | Sumaira Hussain (19259669) (author) |
|---|---|
| Other Authors: | Islam Zada (21755819) (author), Moutaz Alazab (17730060) (author), Hessa Alfraihi (21755825) (author), Manal Aldhayan (22330930) (author), Inam Ullah (5227166) (author), Mohammad Asmat Ullah Khan (22330933) (author) |
| Published: |
2025
|
| Subjects: | |
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