TY - GEN
T1 - Feasibility of Supervised Machine Learning for Cloud Security
AU - Bhamare, Deval
AU - Salman, Tara
AU - Samaka, Mohammed
AU - Erbad, Aiman
AU - Jain, Raj
N1 - Publisher Copyright:
© 2016 IEEE.
PY - 2017/3/23
Y1 - 2017/3/23
N2 - Cloud computing is gaining significant attention, however, security is the biggest hurdle in its wide acceptance. Users of cloud services are under constant fear of data loss, security threats and availability issues. Recently, learning-based methods for security applications are gaining popularity in the literature with the advents in machine learning techniques. However, the major challenge in these methods is obtaining real-time and unbiased datasets. Many datasets are internal and cannot be shared due to privacy issues or may lack certain statistical characteristics. As a result of this, researchers prefer to generate datasets for training and testing purpose in the simulated or closed experimental environments which may lack comprehensiveness. Machine learning models trained with such a single dataset generally result in a semantic gap between results and their application. There is a dearth of research work which demonstrates the effectiveness of these models across multiple datasets obtained in different environments. We argue that it is necessary to test the robustness of the machine learning models, especially in diversified operating conditions, which are prevalent in cloud scenarios. In this work, we use the UNSW dataset to train the supervised machine learning models. We then test these models with ISOT dataset. We present our results and argue that more research in the field of machine learning is still required for its applicability to the cloud security.
AB - Cloud computing is gaining significant attention, however, security is the biggest hurdle in its wide acceptance. Users of cloud services are under constant fear of data loss, security threats and availability issues. Recently, learning-based methods for security applications are gaining popularity in the literature with the advents in machine learning techniques. However, the major challenge in these methods is obtaining real-time and unbiased datasets. Many datasets are internal and cannot be shared due to privacy issues or may lack certain statistical characteristics. As a result of this, researchers prefer to generate datasets for training and testing purpose in the simulated or closed experimental environments which may lack comprehensiveness. Machine learning models trained with such a single dataset generally result in a semantic gap between results and their application. There is a dearth of research work which demonstrates the effectiveness of these models across multiple datasets obtained in different environments. We argue that it is necessary to test the robustness of the machine learning models, especially in diversified operating conditions, which are prevalent in cloud scenarios. In this work, we use the UNSW dataset to train the supervised machine learning models. We then test these models with ISOT dataset. We present our results and argue that more research in the field of machine learning is still required for its applicability to the cloud security.
KW - Cloud
KW - Machine Learning
KW - Security
KW - Supervised Learning
UR - https://www.scopus.com/pages/publications/85018298688
U2 - 10.1109/ICISSEC.2016.7885853
DO - 10.1109/ICISSEC.2016.7885853
M3 - Conference contribution
AN - SCOPUS:85018298688
T3 - ICISS 2016 - 2016 International Conference on Information Science and Security
BT - ICISS 2016 - 2016 International Conference on Information Science and Security
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 3rd International Conference on Information Science and Security, ICISS 2016
Y2 - 19 December 2016 through 22 December 2016
ER -