Currently, with the rapid increasing of data scales in network traffic classifications, how to select traffic features efficiently is becoming a big challenge. Although a number of traditional feature selection methods using the Hadoop-MapReduce framework have been proposed, the execution time was still unsatisfactory with numeral iterative computations during the processing. To address this issue, an efficient feature selection method for network traffic based on a new parallel computing framework called Spark is proposed in this paper. In our approach, the complete feature set is firstly preprocessed based on Fisher score, and a sequential forward search strategy is employed for subsets. The optimal feature subset is then selected using t...
Internet traffic has increased dramatically in recent years due to the popularization of the Interne...
Network traffic classification plays a vital role in various network activities. Network traffic dat...
In the last decade, the research community has focused on new classification methods that rely on st...
Currently, with the rapid increasing of data scales in network traffic classifications, how to selec...
Accepted in IEEE ICC 2021 Workshop on Workshop on Data Driven Intelligence for Networks and Systems ...
Apache Spark’s capabilites offer new possibilities to make software systems more scalable and reliab...
Apache Spark’s capabilites offer new possibilities to make software systems more scalable and relia...
The challenges faced by networks nowadays can be solved to a great extent by the application of accu...
Internet-of-Things (IoT) devices are massively interconnected, which generates a massive amount of n...
The addition of knowledge and data has increased exponentially in the last decade or so. Previously ...
Network traffic classification is the operation of giving appropriate identification to the every tr...
AbstractFlow classification technology plays an important role in network router design, network sec...
Variable selection (also known as feature selection) is essential to optimize the learning complexit...
Variable selection (also known as feature selection) is essential to optimize the learning complexit...
In the last decade, the research community has focused on new classification methods that rely on st...
Internet traffic has increased dramatically in recent years due to the popularization of the Interne...
Network traffic classification plays a vital role in various network activities. Network traffic dat...
In the last decade, the research community has focused on new classification methods that rely on st...
Currently, with the rapid increasing of data scales in network traffic classifications, how to selec...
Accepted in IEEE ICC 2021 Workshop on Workshop on Data Driven Intelligence for Networks and Systems ...
Apache Spark’s capabilites offer new possibilities to make software systems more scalable and reliab...
Apache Spark’s capabilites offer new possibilities to make software systems more scalable and relia...
The challenges faced by networks nowadays can be solved to a great extent by the application of accu...
Internet-of-Things (IoT) devices are massively interconnected, which generates a massive amount of n...
The addition of knowledge and data has increased exponentially in the last decade or so. Previously ...
Network traffic classification is the operation of giving appropriate identification to the every tr...
AbstractFlow classification technology plays an important role in network router design, network sec...
Variable selection (also known as feature selection) is essential to optimize the learning complexit...
Variable selection (also known as feature selection) is essential to optimize the learning complexit...
In the last decade, the research community has focused on new classification methods that rely on st...
Internet traffic has increased dramatically in recent years due to the popularization of the Interne...
Network traffic classification plays a vital role in various network activities. Network traffic dat...
In the last decade, the research community has focused on new classification methods that rely on st...