PREDICTION OF NETWORK ATTACKS USING SUPERVISED MACHINE LEARNING ALGORITHM
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PREDICTION OF NETWORK ATTACKS USING SUPERVISED MACHINE LEARNING ALGORITHM
GUIDE: Mrs . C.ANURADHA
PROJECT INCHARGE : Dr.K.P.Kaliyamurthie
1.KAMMAMPATI SHIVA PRAKASH,
2.BEDUDHURU AMARNATH,
3.RAJUPALAM ASHOK KUMAR,
4.DANDUBOINA BHARANI SATISH
ABSTRACT:
Intrusion Detection System (IDS) needs a data and for this it is important to keep the real working environment to find out all the possibilities of how an attack is about to happen and this seem to be expensive. A Software to detect network attacks in a computer network from unidentified users, including known personnel. The attack detector’s learning task works up a predictive model which is a classifier in this case which differentiates the "bad" (i.e., intrusions or attacks) and "good" or “normal” connections. The primary aim is to use machine learning based techniques to provide packet connection transfer in a better way by predicting results with the at most accuracy. Comparing and discussing the outputs from the couple of machine learning algorithms used for the given dataset with evaluated classification report, find the confusion matrix and categorize the data from priority and the result which shows that the efficiency of the claimed machine learning algorithm method is to be compared with the best accuracy techniques such as Precision, Recall and F1 Score.
Keywords: Intrusion Detection System, Machine Learning, Network attacks, Accuracy
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