6 research outputs found

    Effective methods to detect metamorphic malware: A systematic review

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    The succeeding code for metamorphic Malware is routinely rewritten to remain stealthy and undetected within infected environments. This characteristic is maintained by means of encryption and decryption methods, obfuscation through garbage code insertion, code transformation and registry modification which makes detection very challenging. The main objective of this study is to contribute an evidence-based narrative demonstrating the effectiveness of recent proposals. Sixteen primary studies were included in this analysis based on a pre-defined protocol. The majority of the reviewed detection methods used Opcode, Control Flow Graph (CFG) and API Call Graph. Key challenges facing the detection of metamorphic malware include code obfuscation, lack of dynamic capabilities to analyse code and application difficulty. Methods were further analysed on the basis of their approach, limitation, empirical evidence and key parameters such as dataset, Detection Rate (DR) and False Positive Rate (FPR)

    Logs and Models in Engineering Complex Embedded Production Software Systems

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    An ensemble-based anomaly-behavioural crypto-ransomware pre-encryption detection model

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    Crypto-ransomware is a malware that leverages cryptography to encrypt files for extortion purposes. Even after neutralizing such attacks, the targeted files remain encrypted. This irreversible effect on the target is what distinguishes crypto-ransomware attacks from traditional malware. Thus, it is imperative to detect such attacks during pre-encryption phase. However, existing crypto-ransomware early detection solutions are not effective due to inaccurate definition of the pre-encryption phase boundaries, insufficient data at that phase and the misuse-based approach that the solutions employ, which is not suitable to detect new (zero-day) attacks. Consequently, those solutions suffer from low detection accuracy and high false alarms. Therefore, this research addressed these issues and developed an Ensemble-Based Anomaly-Behavioural Pre-encryption Detection Model (EABDM) to overcome data insufficiency and improve detection accuracy of known and novel crypto-ransomware attacks. In this research, three phases were used in the development of EABDM. In the first phase, a Dynamic Pre-encryption Boundary Definition and Features Extraction (DPBD-FE) scheme was developed by incorporating Rocchio feedback and vector space model to build a pre-encryption boundary vector. Then, an improved term frequency-inverse document frequency technique was utilized to extract the features from runtime data generated during the pre-encryption phase of crypto-ransomware attacks’ lifecycle. In the second phase, a Maximum of Minimum-Based Enhanced Mutual Information Feature Selection (MM-EMIFS) technique was used to select the informative features set, and prevent overfitting caused by high dimensional data. The MM-EMIFS utilized the developed Redundancy Coefficient Gradual Upweighting (RCGU) technique to overcome data insufficiency during pre-encryption phase and improve feature’s significance estimation. In the final phase, an improved technique called incremental bagging (iBagging) built incremental data subsets for anomaly and behavioural-based detection ensembles. The enhanced semi-random subspace selection (ESRS) technique was then utilized to build noise-free and diverse subspaces for each of these incremental data subsets. Based on the subspaces, the base classifiers were trained for each ensemble. Both ensembles employed the majority voting to combine the decisions of the base classifiers. After that, the decision of the anomaly ensemble was combined into behavioural ensemble, which gave the final decision. The experimental evaluation showed that, DPBD-FE scheme reduced the ratio of crypto-ransomware samples whose pre-encryption boundaries were missed from 18% to 8% as compared to existing works. Additionally, the features selected by MM-EMIFS technique improved the detection accuracy from 89% to 96% as compared to existing techniques. Likewise, on average, the EABDM model increased detection accuracy from 85% to 97.88% and reduced the false positive alarms from 12% to 1% in comparison to existing early detection models. These results demonstrated the ability of the EABDM to improve the detection accuracy of crypto-ransomware attacks early and before the encryption takes place to protect files from being held to ransom

    Analyzing Granger causality in climate data with time series classification methods

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    Attribution studies in climate science aim for scientifically ascertaining the influence of climatic variations on natural or anthropogenic factors. Many of those studies adopt the concept of Granger causality to infer statistical cause-effect relationships, while utilizing traditional autoregressive models. In this article, we investigate the potential of state-of-the-art time series classification techniques to enhance causal inference in climate science. We conduct a comparative experimental study of different types of algorithms on a large test suite that comprises a unique collection of datasets from the area of climate-vegetation dynamics. The results indicate that specialized time series classification methods are able to improve existing inference procedures. Substantial differences are observed among the methods that were tested

    CACIC 2015 : XXI Congreso Argentino de Ciencias de la Computación. Libro de actas

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    Actas del XXI Congreso Argentino de Ciencias de la Computación (CACIC 2015), realizado en Sede UNNOBA Junín, del 5 al 9 de octubre de 2015.Red de Universidades con Carreras en Informática (RedUNCI
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