181 research outputs found

    Mass Removal of Botnet Attacks Using Heterogeneous Ensemble Stacking PROSIMA classifier in IoT

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    In an Internet of Things (IoT) environment, any object, which is equipped with sensor node and other electronic devices can involve in the communication over wireless network. Hence, this environment is highly vulnerable to Botnet attack. Botnet attack degrades the system performance in a manner difficult to get identified by the IoT network users. The Botnet attack is incredibly difficult to observe and take away in restricted time. there are challenges prevailed in the detection of Botnet attack due to number of reasons such as its unique structurally repetitive nature, performing non uniform and dissimilar activities and  invisible nature followed by deleting the record of history. Even though existing mechanisms have taken action against the Botnet attack proactively, it has been observed failing to capture the frequent abnormal activities of Botnet attackers .When number of devices in the IoT environment increases, the existing mechanisms have missed more number of Botnet due to its functional complexity. So this type of attack is very complex in nature and difficult to identify. In order to detect Botnet attack, Heterogeneous Ensemble Stacking PROSIMA classifier is proposed. This takes advantage of cluster sampling in place of conventional random sampling for higher accuracy of prediction. The proposed classifier is tested on an experimental test setup with 20 nodes. The proposed approach enables mass removal of Botnet attack detection with higher accuracy that helps in the IoT environment to maintain the reliability of the entire network

    Botnet Detection Using Recurrent Variational Autoencoder

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    Botnets are increasingly used by malicious actors, creating increasing threat to a large number of internet users. To address this growing danger, we propose to study methods to detect botnets, especially those that are hard to capture with the commonly used methods, such as the signature based ones and the existing anomaly-based ones. More specifically, we propose a novel machine learning based method, named Recurrent Variational Autoencoder (RVAE), for detecting botnets through sequential characteristics of network traffic flow data including attacks by botnets. We validate robustness of our method with the CTU-13 dataset, where we have chosen the testing dataset to have different types of botnets than those of training dataset. Tests show that RVAE is able to detect botnets with the same accuracy as the best known results published in literature. In addition, we propose an approach to assign anomaly score based on probability distributions, which allows us to detect botnets in streaming mode as the new networking statistics becomes available. This on-line detection capability would enable real-time detection of unknown botnets

    An Analysis on Network Flow-Based IoT Botnet Detection Using Weka

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    Botnets pose a significant and growing risk to modern networks. Detection of botnets remains an important area of open research in order to prevent the proliferation of botnets and to mitigate the damage that can be caused by botnets that have already been established. Botnet detection can be broadly categorised into two main categories: signature-based detection and anomaly-based detection. This paper sets out to measure the accuracy, false-positive rate, and false-negative rate of four algorithms that are available in Weka for anomaly-based detection of a dataset of HTTP and IRC botnet data. The algorithms that were selected to detect botnets in the Weka environment are J48, naĂŻve Bayes, random forest, and UltraBoost. The dataset was generated using a realistic network environment by The University of New South Wales, Canberra. The findings showed that botnet behaviours from the selected dataset could be detected by Weka with a high degree of accuracy and low false-positive rate. With all features included, the random forest algorithm was found to achieve the highest accuracy with 96.70%, and the algorithm that attained the lowest false-positive rates was also random forest with 0.008. With a reduced feature set of IP addresses and ports, the random forest algorithm attained the highest accuracy and precision and lowest false-positive rate. With only information regarding packets per second being sent and received, J48 was this time the most accurate with its predictions and attained the highest precision

    Artificial Intelligence and Machine Learning in Cybersecurity: Applications, Challenges, and Opportunities for MIS Academics

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    The availability of massive amounts of data, fast computers, and superior machine learning (ML) algorithms has spurred interest in artificial intelligence (AI). It is no surprise, then, that we observe an increase in the application of AI in cybersecurity. Our survey of AI applications in cybersecurity shows most of the present applications are in the areas of malware identification and classification, intrusion detection, and cybercrime prevention. We should, however, be aware that AI-enabled cybersecurity is not without its drawbacks. Challenges to AI solutions include a shortage of good quality data to train machine learning models, the potential for exploits via adversarial AI/ML, and limited human expertise in AI. However, the rewards in terms of increased accuracy of cyberattack predictions, faster response to cyberattacks, and improved cybersecurity make it worthwhile to overcome these challenges. We present a summary of the current research on the application of AI and ML to improve cybersecurity, challenges that need to be overcome, and research opportunities for academics in management information systems

    Fast Flux Domain Detection Using DNS Traffic

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    There are many attacks possible that affect the services of DNS server, one such type of attack is Distributed Denial of Service (DDoS). So to avoid such attacks, DNS servers use various types of techniques like load balancing, Round Robin DNS, Content Distribution Networks, etc. But cybercriminals use these techniques to hide their actual and network location from the outside world. One such type of technique is Fast-Flux Service Networks, which is like proxies to the cybercriminals that makes them untraceable. FFSN is a major threat to internet security and used in many illegal scams like phishing websites, malware delivery, illegal adult content, and etc. Fast flux service networks have some limitation as attackers do not have control over the compromised PC’s physically. For the detection of FFSN, broadly two approaches have been proposed, namely, (i) Using passive network traffic, and (ii) Using active network traffic. The problem of detection with active network traffic is that they predict CDN domain as FFSN domain because initially, FFSN looks like CDN. Further, there are many machine learning algorithms have been used to detect FFSN. In this research, we emphasize on two problems, namely, (i) Features used for detecting the FFSN which helps us to distinguish FFSN from the other network efficiently, and (ii) Find the best classifier for detection of FFSN. This work shows how relevant features extracted from the network traffic help us to distinguish FFSN from benign domains. Further, we try to propose the best threshold values for each feature that efficiently detect FFSN while distinguishing it from other benign domains. In this work, we have used five different machine learning algorithms, namely, Decision Tree, Random Forest, SVM, KNN, and Boosted Tree. Then, we compare the performance of these five machine learning algorithms to find out which is the best one to detect fast flux domain from passive DNS network traffic

    Real-time big data processing for anomaly detection : a survey

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    The advent of connected devices and omnipresence of Internet have paved way for intruders to attack networks, which leads to cyber-attack, financial loss, information theft in healthcare, and cyber war. Hence, network security analytics has become an important area of concern and has gained intensive attention among researchers, off late, specifically in the domain of anomaly detection in network, which is considered crucial for network security. However, preliminary investigations have revealed that the existing approaches to detect anomalies in network are not effective enough, particularly to detect them in real time. The reason for the inefficacy of current approaches is mainly due the amassment of massive volumes of data though the connected devices. Therefore, it is crucial to propose a framework that effectively handles real time big data processing and detect anomalies in networks. In this regard, this paper attempts to address the issue of detecting anomalies in real time. Respectively, this paper has surveyed the state-of-the-art real-time big data processing technologies related to anomaly detection and the vital characteristics of associated machine learning algorithms. This paper begins with the explanation of essential contexts and taxonomy of real-time big data processing, anomalous detection, and machine learning algorithms, followed by the review of big data processing technologies. Finally, the identified research challenges of real-time big data processing in anomaly detection are discussed. © 2018 Elsevier Lt

    A Guide for selecting big data analytics tools in an organisation

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    Selection of appropriate big data analytics (BDA) tools (software) for business purposes is increasingly challenging, which sometimes lead to incompatibility with existing technologies. This becomes prohibitive in attempts to execute some functions or activities in an environment. The objective of this study was to propose a model, which can be used to guide the selection of BDA in an organization. The interpretivist approach was employed. Qualitative data was collected and analyzed using the hermeneutics approach. The analysis focused on examining and gaining better understanding of the strengths and weaknesses of the most common BDA tools. The technical and non-technical factors that influence the selection of BDA were identified. Based on which a solution is proposed in the form of a model. The model is intended to guide selection of most appropriate BDA tools in an organization. The model is intended to increase BDA usefulness towards improving organization’s competitiveness

    Threats from Botnets

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    At present, various cyberattacks based on Botnet are the most serious security threats to the Internet. As Botnet continue to evolve and behavioral research on Botnet is inadequate, the question of how to apply some behavioral problems to Botnet research and combine the psychology of the operator to analyze the future trend of Botnet is still a continuous and challenging issue. Botnet is a common computing platform that can be controlled remotely by attackers by invading several noncooperative user terminals in the network space. It is an attacking platform consisting of multiple Bots controlled by a hacker. The classification of Botnet and the working mechanism of Botnet are introduced in this chapter. The threats and the threat evaluation of Botnet are summarized
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