The quick access to information on social media networks as well as its exponential rise also made it difficult to distinguish among fake information or real information. The fast dissemination by way of sharing has enhanced its falsification exponentially. It is also important for the credibility of social media networks to avoid the spread of fake information. So it is emerging research challenge to automatically check for misstatement of information through its source, content, or publisher and prevent the unauthenticated sources from spreading rumours. This paper demonstrates an artificial intelligence based approach for the identification of the false statements made by social network entities. Two variants of Deep neural networks are being applied to evalues datasets and analyse for fake news presence. The implementation setup produced maximum extent 99% classification accuracy, when dataset is tested for binary (true or false) labeling with multiple epochs.
In this world of the Internet, security plays an important role as Internet users grow rapidly. Security in the network is one of the modern periods’ main issues. In the last decade, the exponential growth and massive use of the Internet have enabled system security vulnerabilities a critical aspect. Intrusion detection system to track unauthorized access as well as exceptional attacks through secured networks. Several experiments on the IDS have been carried out in recent years. And to know the current state of machine learning approaches to address the issue of intrusion detection. IDS is commonly used for the detection and recognition of cyberattacks at the network and host stage, in a timely and automatic manner. This research assesses the creation of a deep neural network (DNN), a form of deep learning model as well as ELM to detect unpredictable and unpredictable cyber-attacks.
In this world of the Internet, security plays an
important role as Internet users grow rapidly. Security in the
network is one of the modern periods' main issues. In the last
decade, the exponential growth and massive use of the Internet
have enabled system security vulnerabilities a critical aspect.
Intrusion detection system to track unauthorized access as well as
exceptional attacks through secured networks. Several
experiments on the IDS have been carried out in recent years.
And to know the current state of machine learning approaches to
address the issue of intrusion detection. IDS is commonly used
for the detection and recognition of cyberattacks at the network
and host stage, in a timely and automatic manner. This research
assesses the creation of a deep neural network (DNN), a form of
deep learning model as well as ELM to detect unpredictable and
unpredictable cyber-attacks
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