User Behavior Profiling Using Ensemble Approach for Insider Threat Detection
Title | User Behavior Profiling Using Ensemble Approach for Insider Threat Detection |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Singh, Malvika, Mehtre, B.M., Sangeetha, S. |
Conference Name | 2019 IEEE 5th International Conference on Identity, Security, and Behavior Analysis (ISBA) |
Date Published | jan |
Keywords | anomaly detection, behavioural sciences computing, CNN, Collaboration, convolution, convolution neural network, convolution neural networks, convolutional neural nets, cyber security, ensemble hybrid machine learning, feature extraction, Human Behavior, human behavior impact, insider threat, Insider Threat Detection, learning (artificial intelligence), machine learning, malicious activities, Metrics, Monitoring, MSLSTM, multistate long short term memory, multistate LSTM, network walls, Neural networks, Organizations, policy-based governance, pubcrawl, resilience, Resiliency, security of data, Servers, spatial-temporal behavior features, time series, Time Series Anomaly Detection, user behavior action sequence, user behavior profiling |
Abstract | The greatest threat towards securing the organization and its assets are no longer the attackers attacking beyond the network walls of the organization but the insiders present within the organization with malicious intent. Existing approaches helps to monitor, detect and prevent any malicious activities within an organization's network while ignoring the human behavior impact on security. In this paper we have focused on user behavior profiling approach to monitor and analyze user behavior action sequence to detect insider threats. We present an ensemble hybrid machine learning approach using Multi State Long Short Term Memory (MSLSTM) and Convolution Neural Networks (CNN) based time series anomaly detection to detect the additive outliers in the behavior patterns based on their spatial-temporal behavior features. We find that using Multistate LSTM is better than basic single state LSTM. The proposed method with Multistate LSTM can successfully detect the insider threats providing the AUC of 0.9042 on train data and AUC of 0.9047 on test data when trained with publically available dataset for insider threats. |
URL | https://ieeexplore.ieee.org/document/8778466 |
DOI | 10.1109/ISBA.2019.8778466 |
Citation Key | singh_user_2019 |
- resilience
- Monitoring
- MSLSTM
- multistate long short term memory
- multistate LSTM
- network walls
- Neural networks
- Organizations
- policy-based governance
- pubcrawl
- Metrics
- Resiliency
- security of data
- Servers
- spatial-temporal behavior features
- time series
- Time Series Anomaly Detection
- user behavior action sequence
- user behavior profiling
- ensemble hybrid machine learning
- behavioural sciences computing
- CNN
- collaboration
- convolution
- convolution neural network
- convolution neural networks
- convolutional neural nets
- cyber security
- Anomaly Detection
- feature extraction
- Human behavior
- human behavior impact
- insider threat
- Insider Threat Detection
- learning (artificial intelligence)
- machine learning
- malicious activities