Phishing havolalarni aniqlash usullari
Keywords:
phishing, asosiy domen, subdomen, shubhali so‘zlar, shoshilinch so‘zlar, path traversialAbstract
Ushbu maqolada phishing (aldov yo‘li bilan foydalanuvchi malumotlarini o‘g’irlash) havolalarni aniqlash usullari keltirib o‘tilgan. Maqolada asosoan inson ishtrokida havolalarni ustiga bosib kirishdan avval uning tuzilishini tahlil qilgan holda hulosa chiqarish usullari keltirib o‘tilgan
References
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