Automated identification of network anomalies and their causes with interpretable machine learning: The CIAN methodology and TTrees implementation

被引:2
|
作者
Moulay, Mohamed [1 ]
Leiva, Rafael Garcia [2 ]
Maroni, Pablo J. Rojo [3 ]
Diez, Fernando [4 ]
Mancuso, Vincenzo [5 ]
Anta, Antonio Fernandez [5 ]
机构
[1] Univ Carlos III Madrid, Madrid, Spain
[2] Vodafone, Madrid, Spain
[3] Nokia Cloud & Networks Serv, Madrid, Spain
[4] Univ Politecn Madrid, Madrid, Spain
[5] IMDEA Networks Inst, Madrid, Spain
关键词
Troubleshooting; Anomaly detection; Feature selection; Interpretable machine learning; INFORMATION; DIAGNOSIS; FRAMEWORK;
D O I
10.1016/j.comcom.2022.05.013
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Leveraging machine learning (ML) for the detection of network problems dates back to handling call-dropping issues in telephony. However, troubleshooting cellular networks is still a manual task, assigned to experts who monitor the network around the clock. To help in this task we present CIAN (from Causality Inference of Anomalies in Networks), a practical and interpretable ML methodology, which we implement in the form of a software tool named TTrees (from Troubleshooting Trees). We have designed CIAN to automate the identification of the causes of performance anomalies in cellular networks. Our methodology is unsupervised and combines multiple ML algorithms (e.g., decision trees and clustering) and Kolmogorov complexity-inspired data analysis tools that we have developed for this work. CIAN can be used with small volumes of data and is quick at training.Our experiments use diverse data sets obtained from measurements in operational commercial mobile networks. They show that the TTrees implementation of CIAN can automatically identify and accurately classify network anomalies - e.g., cases for which a network low performance is not apparently justified by operational conditions - training with just a few hundreds of data samples. The resulting information hence enables precise troubleshooting actions. In particular, we showcase how TTrees can be flexibly used to monitor the performance of TCP and QUIC protocols when they are adopted to serve mobile users.
引用
收藏
页码:327 / 348
页数:22
相关论文
共 50 条
  • [1] TTrees: Automated Classification of Causes of Network Anomalies with Little Data
    Moulay, Mohamed
    Leiva, Rafael Garcia
    Mancuso, Vincenzo
    Maroni, Pablo J. Rojo
    Anta, Antonio Fernandez
    2021 IEEE 22ND INTERNATIONAL SYMPOSIUM ON A WORLD OF WIRELESS, MOBILE AND MULTIMEDIA NETWORKS (WOWMOM 2021), 2021, : 199 - 208
  • [2] Interpretable machine learning models for predicting and explaining vehicle fuel consumption anomalies
    Barbado, Alberto
    Corcho, Oscar
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2022, 115
  • [3] Accurate virus identification with interpretable Raman signatures by machine learning
    Ye, Jiarong
    Yeh, Yin-Ting
    Xue, Yuan
    Wang, Ziyang
    Zhang, Na
    Liu, He
    Zhang, Kunyan
    Ricker, RyeAnne
    Yu, Zhuohang
    Roder, Allison
    Lopez, Nestor Perea
    Organtini, Lindsey
    Greene, Wallace
    Hafenstein, Susan
    Lu, Huaguang
    Ghedin, Elodie
    Terrones, Mauricio
    Huang, Shengxi
    Huang, Sharon Xiaolei
    PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2022, 119 (23)
  • [4] Multiscale graph neural network autoencoders for interpretable scientific machine learning
    Barwey, Shivam
    Shankar, Varun
    Viswanathan, Venkatasubramanian
    Maulik, Romit
    JOURNAL OF COMPUTATIONAL PHYSICS, 2023, 495
  • [5] Interpretable machine learning analysis and automated modeling to simulate fluid-particle flows
    Ouyang, Bo
    Zhu, Litao
    Luo, Zhenghong
    PARTICUOLOGY, 2023, 80 : 42 - 52
  • [6] Towards Interpretable Machine Learning for Automated Damage Detection Based on Ultrasonic Guided Waves
    Schnur, Christopher
    Goodarzi, Payman
    Lugovtsova, Yevgeniya
    Bulling, Jannis
    Prager, Jens
    Tschoeke, Kilian
    Moll, Jochen
    Schuetze, Andreas
    Schneider, Tizian
    SENSORS, 2022, 22 (01)
  • [7] MarkerML - Marker Feature Identification in Metagenomic Datasets Using Interpretable Machine Learning
    Nagpal, Sunil
    Singh, Rohan
    Taneja, Bhupesh
    Mande, Sharmila S.
    JOURNAL OF MOLECULAR BIOLOGY, 2022, 434 (11)
  • [8] Interpretable Machine Learning for Oral Lesion Diagnosis Through Prototypical Instances Identification
    Cascione, Alessio
    Setzu, Mattia
    Galatolo, Federico A.
    Cimino, Mario G. C. A.
    Guidotti, Riccardo
    DISCOVERY SCIENCE, DS 2024, PT II, 2025, 15244 : 314 - 329
  • [9] Interpretable machine-learning identification of the crossover from subradiance to superradiance in an atomic array
    Lin, C. Y.
    Jen, H. H.
    JOURNAL OF PHYSICS B-ATOMIC MOLECULAR AND OPTICAL PHYSICS, 2022, 55 (13)
  • [10] Identification and causal analysis of predatory open access journals based on interpretable machine learning
    Wu, Jinhong
    Liu, Tianye
    Mu, Keliang
    Zhou, Lei
    SCIENTOMETRICS, 2024, 129 (04) : 2131 - 2158