Anomaly detection has attracted the attention of researchers from a variety of backgrounds as it finds numerous applications in the industry. As a subfield, fault detection plays a crucial role in growing telecommunications networks since failures lead to dissatisfaction and hence financial drawbacks. It aims at identifying unusual events in the system log files. System logs are messages from the elements of the network to highlight their status. The main challenge is to cope with the rate the data volume grows. Traditional methods such as expert systems are no longer practical making machine learning approaches more valuable. In this thesis work, unsupervised anomaly (fault) detection in unstructured system logs is investigated. The effect...
With the increase of network virtualization and the disparity of vendors, the continuous monitoring ...
Due to a constant increase in the number of connected devices and there is an increased demand for c...
This paper presents a novel method to enhance the performance of Clustering-based Autoencoder models...
Anomaly detection has attracted the attention of researchers from a variety of backgrounds as it fin...
Context: Log files are produced in most larger computer systems today which contain highly valuable ...
In recent years due to rapid growth of information technology and easy access to computers, digital ...
Background: A problematic area in today’s large scale distributed systems is the exponential amount ...
Fault detection is one of the most important aspects of telecommunication networks. Considering the ...
Anomaly detection is a huge fi\u80eld of research focused on the task of \u80finding weird or outlyi...
Anomaly detection identifies unusual patterns or items in a dataset. The anomalies identified for sy...
As the complexity of today’s systems increases, manual system monitoring and log fi\u80le analysis a...
Anomaly detection has become a crucial technology in several application fields, mostly for network ...
Logs generated by the applications, devices, and servers contain information that can be used to det...
This thesis deals with anomaly detection of log data. Big software systems produce a great amount of...
A methodology as well as a suggested solution to the problem of unsupervised anomaly detection for c...
With the increase of network virtualization and the disparity of vendors, the continuous monitoring ...
Due to a constant increase in the number of connected devices and there is an increased demand for c...
This paper presents a novel method to enhance the performance of Clustering-based Autoencoder models...
Anomaly detection has attracted the attention of researchers from a variety of backgrounds as it fin...
Context: Log files are produced in most larger computer systems today which contain highly valuable ...
In recent years due to rapid growth of information technology and easy access to computers, digital ...
Background: A problematic area in today’s large scale distributed systems is the exponential amount ...
Fault detection is one of the most important aspects of telecommunication networks. Considering the ...
Anomaly detection is a huge fi\u80eld of research focused on the task of \u80finding weird or outlyi...
Anomaly detection identifies unusual patterns or items in a dataset. The anomalies identified for sy...
As the complexity of today’s systems increases, manual system monitoring and log fi\u80le analysis a...
Anomaly detection has become a crucial technology in several application fields, mostly for network ...
Logs generated by the applications, devices, and servers contain information that can be used to det...
This thesis deals with anomaly detection of log data. Big software systems produce a great amount of...
A methodology as well as a suggested solution to the problem of unsupervised anomaly detection for c...
With the increase of network virtualization and the disparity of vendors, the continuous monitoring ...
Due to a constant increase in the number of connected devices and there is an increased demand for c...
This paper presents a novel method to enhance the performance of Clustering-based Autoencoder models...