Multivariate Multi-Order Markov Multi-Modal Prediction With Its Applications in Network Traffic Management

Predicting the future network traffic through big data analysis technologies has been one of the important preoccupations of network design and management. Combining Markov chains with tensors to implement predictions has received considerable attention in the era of big data. However, when dealing with multi-order Markov models, the existing approaches including the combination of states and Z-eigen decomposition still face some shortcomings. Therefore, this paper focuses on proposing a novel multivariate multi-order Markov transition to realize multi-modal accurate predictions. First, we put forward two new tensor operations including tensor join and unified product (UP). Then a general multivariate multi-order (2M) Markov model with its UP-based state transition is proposed. Afterwards, we develop a multi-step transition tensor for 2M Markov models to implement the multi-step state transition. Furthermore, an UP-based power method is proposed to calculate the stationary joint probability distribution tensor (i.e., stationary joint eigentensor, SJE) and realize SJE based multi-modal accurate predictions. Finally, a series of experiments under various Markov models on real-world network traffic datasets are conducted. Experimental results demonstrate that the proposed SJE based approach can improve the prediction accuracy for network traffic by highest up to 38.47 percentage points compared with the Z-eigen based approach.

[1]  Mianxiong Dong,et al.  In Broker We Trust: A Double-Auction Approach for Resource Allocation in NFV Markets , 2018, IEEE Transactions on Network and Service Management.

[2]  V. Alarcon-Aquino,et al.  Multiresolution FIR neural-network-based learning algorithm applied to network traffic prediction , 2006, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[3]  Na Li,et al.  Solving Multilinear Systems via Tensor Inversion , 2013, SIAM J. Matrix Anal. Appl..

[4]  Raouf Boutaba,et al.  A comprehensive survey on machine learning for networking: evolution, applications and research opportunities , 2018, Journal of Internet Services and Applications.

[5]  Masoud Hajarian,et al.  Convergence of a transition probability tensor of a higher‐order Markov chain to the stationary probability vector , 2016, Numer. Linear Algebra Appl..

[6]  Laurence T. Yang,et al.  A Tensor-Based Holistic Edge Computing Optimization Framework for Internet of Things , 2018, IEEE Network.

[7]  M. Ng,et al.  On the limiting probability distribution of a transition probability tensor , 2014 .

[8]  Laurence T. Yang,et al.  A tensor-based big data model for QoS improvement in software defined networks , 2016, IEEE Network.

[9]  Michael J E Sternberg,et al.  The Phyre2 web portal for protein modeling, prediction and analysis , 2015, Nature Protocols.

[10]  Jun Zhang,et al.  Internet Traffic Classification by Aggregating Correlated Naive Bayes Predictions , 2013, IEEE Transactions on Information Forensics and Security.

[11]  Jianhua Ma,et al.  An Incremental Tensor-Train Decomposition for Cyber-Physical-Social Big Data , 2018, IEEE Transactions on Big Data.

[12]  Laurence T. Yang,et al.  A Tensor-Based Framework for Software-Defined Cloud Data Center , 2016, ACM Trans. Multim. Comput. Commun. Appl..

[13]  Yi Xie,et al.  A Forward-Backward Algorithm for Nested Hidden semi-Markov Model and Application to Network Traffic , 2013, Comput. J..

[14]  Seungjoon Lee,et al.  Network function virtualization: Challenges and opportunities for innovations , 2015, IEEE Communications Magazine.

[15]  Laurence T. Yang,et al.  High-order possibilistic c-means algorithms based on tensor decompositions for big data in IoT , 2018, Inf. Fusion.

[16]  Jun Zhang,et al.  Network Traffic Classification Using Correlation Information , 2013, IEEE Transactions on Parallel and Distributed Systems.

[17]  Liqun Qi,et al.  Convergence of a second order Markov chain , 2013, Appl. Math. Comput..

[18]  Andrzej Cichocki,et al.  Low-Rank Tensor Networks for Dimensionality Reduction and Large-Scale Optimization Problems: Perspectives and Challenges PART 1 , 2016, ArXiv.

[19]  Min Chen,et al.  Statistical Learning for Anomaly Detection in Cloud Server Systems: A Multi-Order Markov Chain Framework , 2018, IEEE Transactions on Cloud Computing.

[20]  Jun Zhang,et al.  Internet Traffic Classification Using Constrained Clustering , 2014, IEEE Transactions on Parallel and Distributed Systems.

[21]  Do Young Eun,et al.  A high-order Markov chain based scheduling algorithm for low delay in CSMA networks , 2014, INFOCOM 2014.

[22]  Jiankun Hu,et al.  Modeling Oscillation Behavior of Network Traffic by Nested Hidden Markov Model with Variable State-Duration , 2013, IEEE Transactions on Parallel and Distributed Systems.

[23]  Peng Li,et al.  Deep Convolutional Computation Model for Feature Learning on Big Data in Internet of Things , 2018, IEEE Transactions on Industrial Informatics.

[24]  Tamara G. Kolda,et al.  Tensor Decompositions and Applications , 2009, SIAM Rev..

[25]  Shaojie Qiao,et al.  A Self-Adaptive Parameter Selection Trajectory Prediction Approach via Hidden Markov Models , 2015, IEEE Transactions on Intelligent Transportation Systems.

[26]  Naixue Xiong,et al.  Anomaly secure detection methods by analyzing dynamic characteristics of the network traffic in cloud communications , 2014, Inf. Sci..

[27]  David F. Gleich,et al.  Multilinear PageRank , 2014, SIAM J. Matrix Anal. Appl..

[28]  Laurence T. Yang,et al.  A Holistic Optimization Framework for Mobile Cloud Task Scheduling , 2019, IEEE Transactions on Sustainable Computing.

[29]  Stephen S. Yau,et al.  Tensor-Train-Based High-Order Dominant Eigen Decomposition for Multimodal Prediction Services , 2021, IEEE Transactions on Engineering Management.

[30]  Liqun Qi,et al.  Eigenvalues of a real supersymmetric tensor , 2005, J. Symb. Comput..

[31]  Faqir Zarrar Yousaf,et al.  NFV and SDN—Key Technology Enablers for 5G Networks , 2017, IEEE Journal on Selected Areas in Communications.

[32]  Laurence T. Yang,et al.  ${M^2}{T^2}$: The Multivariate Multistep Transition Tensor for User Mobility Pattern Prediction , 2020, IEEE Transactions on Network Science and Engineering.

[33]  Weihua Sheng,et al.  A Hidden Markov Model based driver intention prediction system , 2015, 2015 IEEE International Conference on Cyber Technology in Automation, Control, and Intelligent Systems (CYBER).

[34]  Michael K. Ng,et al.  Markov Chains: Models, Algorithms and Applications (International Series in Operations Research & Management Science) , 2005 .

[35]  Tarik Taleb,et al.  Conformal Mapping for Optimal Network Slice Planning Based on Canonical Domains , 2018, IEEE Journal on Selected Areas in Communications.