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   intrusion detection system using gwo-optimized logistic regression  
   
نویسنده fahad alnaseri zainab ,abdallah al-awsi wasan ,khalilian madjid
منبع اولين كنفرانس ملي پژوهش و نوآوري در هوش مصنوعي - 1402 - دوره : 1 - اولین کنفرانس ملی پژوهش و نوآوری در هوش مصنوعی - کد همایش: 02230-75197 - صفحه:0 -0
چکیده    The internet of things is able to grow and disseminate with the assistance of newly developed technologies. these devices have limited resources, which can be exploited in some way to generate distributed denial-of-service attacks that are widely distributed and extended until the server is completely reduced or stopped. within the scope of this research, we suggest a framework for the detection of distributed denial-of-service attacks that ion fog computing. the proposed gray wolf optimization logistic regression (gwo-lr) system is made up of an algorithm for logistic regression that is trained with the help of an algorithm for gray wolf optimization gwo. the gwo-lr is used to solve the classification problem in the unsw bot-iot 2018 database. the results showed that the classifier is able to detect attacks with a high accuracy of 98.88% and an f-measure of 99%.
کلیدواژه iot، gray wolf optimization، logistic regression، intrusion detection
آدرس , iran, , iran, , iran
پست الکترونیکی khalilian@kiau.ac.ir
 
     
   
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