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Mobile user movement prediction using bayesian learning for neural networks

Published: 12 August 2007 Publication History

Abstract

Nowadays, path prediction is being extensively examined for use in the context of mobile and wireless computing towards more efficient network resource management schemes. Path prediction allows the network and services to further enhance the quality of service levels that the user enjoys. In this paper we present a path prediction algorithm that exploits human creatures habits. In this paper, we present a novel hybrid Bayesian neural network model for predicting locations on Cellular Networks (can also be extended to other wireless networks such as WI-FI and WiMAX). We investigate different parallel implementation techniques on mobile devices of the proposed approach and compare it to many standard neural network techniques such as: Back-propagation, Elman, Resilient, Levenberg-Marqudat, and One-Step Secant models. In our experiments, we compare results of the proposed Bayesian Neural Network with 5 standard neural network techniques in predicting both next location and next service to request. Bayesian learning for Neural Networks predicts both location and service better than standard neural network techniques since it uses well founded probability model to represent uncertainty about the relationships being learned. The result of Bayesian training is a posterior distribution over network weights. We use Markov chain Monte Carlo methods (MCMC) to sample N values from the posterior weights distribution. These N samples vote for the best prediction. Simulations of the algorithm, performed using a Realistic Mobility Patterns, show increased prediction accuracy.

References

[1]
Hassan Karimi and Xiong Liu. A Predictive Location Model for Location-Based Services. GIS'03, November 7--8, 2003, New Orleans, Louisiana, USA.
[2]
Alejandro Quintero. A User Pattern Learning Strategy for Managing Users' Mobility in UMTS Networks.IEEE Transactions on Mobile Computing, VOL. 4, NO. 6, November/December 2005.
[3]
Jarno Vanhatalo and Aki Vehtari. MCMC Methods for MLP-network and Gaussian Process and Stuff- A documentation for Matlab Toolbox MCMCstuff. Laboratory of Computational Engineering, Helsinki University of Technology.
[4]
Radford Neal. Bayesian Methods for Machine Learning. NIPS Tutorial, 13 December 2004, University of Toronto.
[5]
Jouko Lampinen and Aki Vehtari. Bayesian Approach for Neural Networks -- Review and Case Studies. Laboratory of Computational Engineering, Helsinki University of Technology.
[6]
Aki Vehtari, Simo Särkkä, and Jouko Lampinen. On MCMC Sampling in Bayesian MLP Neural Networks. Laboratory of Computational Engineering, Helsinki University of Technology.

Cited By

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  • (2021)Network Slicing for Beyond 5G Systems: An Overview of the Smart Port Use CaseElectronics10.3390/electronics1009109010:9(1090)Online publication date: 5-May-2021
  • (2021)Predicting Individual Mobility Behavior of Ride-Hailing Service Users considering Heterogeneity of Trip Purposes2021 IEEE International Intelligent Transportation Systems Conference (ITSC)10.1109/ITSC48978.2021.9565125(3685-3690)Online publication date: 19-Sep-2021
  • (2021)A-TPN: User trajectory prediction method based on mobile communication CDR data2021 3rd International Academic Exchange Conference on Science and Technology Innovation (IAECST)10.1109/IAECST54258.2021.9695577(494-498)Online publication date: 10-Dec-2021
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    cover image ACM Conferences
    IWCMC '07: Proceedings of the 2007 international conference on Wireless communications and mobile computing
    August 2007
    716 pages
    ISBN:9781595936950
    DOI:10.1145/1280940
    Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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    Publication History

    Published: 12 August 2007

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    Author Tags

    1. Bayesian network
    2. Markov chain
    3. Monte Carlo methods
    4. neural networks

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    Cited By

    View all
    • (2021)Network Slicing for Beyond 5G Systems: An Overview of the Smart Port Use CaseElectronics10.3390/electronics1009109010:9(1090)Online publication date: 5-May-2021
    • (2021)Predicting Individual Mobility Behavior of Ride-Hailing Service Users considering Heterogeneity of Trip Purposes2021 IEEE International Intelligent Transportation Systems Conference (ITSC)10.1109/ITSC48978.2021.9565125(3685-3690)Online publication date: 19-Sep-2021
    • (2021)A-TPN: User trajectory prediction method based on mobile communication CDR data2021 3rd International Academic Exchange Conference on Science and Technology Innovation (IAECST)10.1109/IAECST54258.2021.9695577(494-498)Online publication date: 10-Dec-2021
    • (2021)An LSTM‐based cell association scheme for proactive bandwidth management in 5G fog radio access networksInternational Journal of Communication Systems10.1002/dac.494334:15Online publication date: 10-Aug-2021
    • (2020)Mobility-Aware Content Preference Learning in Decentralized Caching NetworksIEEE Transactions on Cognitive Communications and Networking10.1109/TCCN.2019.29375196:1(62-73)Online publication date: Mar-2020
    • (2019)Collaborative learning between cloud and end devicesProceedings of the 4th ACM/IEEE Symposium on Edge Computing10.1145/3318216.3363304(139-151)Online publication date: 7-Nov-2019
    • (2019)STLP-GSM: a method to predict future locations of individuals based on geotagged social media dataInternational Journal of Geographical Information Science10.1080/13658816.2019.163063033:12(2337-2362)Online publication date: 19-Jul-2019
    • (2018)Hidden location prediction using check-in patterns in location-based social networksKnowledge and Information Systems10.1007/s10115-018-1170-557:3(571-601)Online publication date: 1-Dec-2018
    • (2017)Effectively mining time-constrained sequential patterns of smartphone application usageProceedings of the 11th International Conference on Ubiquitous Information Management and Communication10.1145/3022227.3022265(1-8)Online publication date: 5-Jan-2017
    • (2017)A potential approach for mobility prediction using GPS data2017 Seventh International Conference on Information Science and Technology (ICIST)10.1109/ICIST.2017.7926813(45-50)Online publication date: Apr-2017
    • Show More Cited By

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