Design and implementation for automated network troubleshooting using data mining

Article English OPEN
Rozaki, Eleni;

The efficient and effective monitoring of mobile networks is vital given the number of users who rely on such networks and the importance of those networks. The purpose of this paper is to present a monitoring scheme for mobile networks based on the use of rules and dec... View more
  • References (27)
    27 references, page 1 of 3

    [1] D. Adrada, E. Salazar, J. Rojas, and J. C. Corrales, (2014) “Automatic code instrumentation for converged service monitoring and fault detection”, 28th International Conference on Advanced Information Networking and Applications Workshops, pp. 708-713.

    [2] L. Monacelli and R. Francescangeli, (2011) “Fault management for volp applications over wireless and wired ngn networks: an operational prospective”, IEEE 36th Conference Local Computer Networks, pp. 711-718.

    [3] A. Rosich, H. Voos, and L. Pan, (2014) “Network design for distributed model-based fault detection and isolation”, IEEE Conference on Control Applications, pp. 1226-1231.

    [4] L. Zhang, X. Meng and H. Zhou, (2009) “Network fault diagnosis using hierarchical svms based on kernel method”, 2nd International Workshop on Knowledge Discovery and Data Mining, pp. 753- 756.

    [5] R. Ji, J. Gao, G. Xie, G.T. Flowers, and C. Chen, (2014) “A fault diagnosis method of communication connectors in wireless receiver front-end circuits”, 60th Holm Conference on Electrical Contacts, pp. 1-6.

    [6] Y-Y. Wang, K-W. Wu, C-M. Huang, and C-C. Chan, (2014) “Quality management and network fault diagnosis for iptv service”, 16th Asia-Pacific Network Operations and Management Symposium, pp. 1-4.

    [7] B. M. Patil, D. Toshniwal, and R. C. Joshi, (2009) “Predicting burn patient survivability using decision tree in weka environment”, IEEE International Advance Computing Conference, pp. 1353- 1356.

    [8] P. K. Srimani, and K. Balaji, (2014) “A comparative study of different classifiers on search engine based educational data”, International Journal of Conceptions on computing and Information Technology, Vol. 2, pp. 6-11.

    [9] W. Nor Haizan, W. Mohamed, M. N. M. Salleh, and A. H. Omar, (2012) “A comparative study of reduced error pruning method in decision tree algorithms”, IEEE International Conference on Control System, Computing and Engineering, pp. 392-397.

    [10] I. A. Witten and E. Frank, (2005) Data Mining: Practical Machine Learning Tools and Techniques with Java Implementations, San Francisco, CA: Morgan-Kaufmann.

  • Related Organizations (3)
  • Metrics
Share - Bookmark