Authors
Muhammad Shafiq, Zhihong Tian, Ali Kashif Bashir, Alireza Jolfaei, Xiangzhan Yu
Publication date
2020/9/1
Source
Sustainable Cities and Society
Volume
60
Pages
102177
Publisher
Elsevier
Description
This survey paper describes the significant literature survey of Sustainable Smart Cities (SSC), Machine Learning (ML), Data Mining (DM), datasets, feature extraction and selection for network traffic classification. Considering relevance and most cited methods and datasets of features were identified, read and summarized. As data and data features are essential in Internet traffic classification using machine learning techniques, some well-known and most used datasets with details statistical features are described. Different classification techniques for SSC network traffic classification are presented with more information. The complexity of data set, features extraction and machine learning methods are addressed. In the end, challenges and recommendations for SSC network traffic classification with the dataset of features are presented.
Total citations
20202021202220232024549626632
Scholar articles