Forecasting Service Performance on the Basis of Temporal Information by the Conditional Restricted Boltzmann Machine

Predicting the service performance of Internet applications is important in service selection, especially for video services. In order to design a predictor for forecasting video service performance in third-party application, two famous service providers in China, Iqiyi and Letv, are monitored and...

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Veröffentlicht in:IEICE Transactions on Communications 2018/05/01, Vol.E101.B(5), pp.1210-1221
Hauptverfasser: YOU, Jiali, XUE, Hanxing, ZHUO, Yu, ZHANG, Xin, WANG, Jinlin
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container_issue 5
container_start_page 1210
container_title IEICE Transactions on Communications
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creator YOU, Jiali
XUE, Hanxing
ZHUO, Yu
ZHANG, Xin
WANG, Jinlin
description Predicting the service performance of Internet applications is important in service selection, especially for video services. In order to design a predictor for forecasting video service performance in third-party application, two famous service providers in China, Iqiyi and Letv, are monitored and analyzed. The study highlights that the measured performance in the observation period is time-series data, and it has strong autocorrelation, which means it is predictable. In order to combine the temporal information and map the measured data to a proper feature space, the authors propose a predictor based on a Conditional Restricted Boltzmann Machine (CRBM), which can capture the potential temporal relationship of the historical information. Meanwhile, the measured data of different sources are combined to enhance the training process, which can enlarge the training size and avoid the over-fit problem. Experiments show that combining the measured results from different resolutions for a video can raise prediction performance, and the CRBM algorithm shows better prediction ability and more stable performance than the baseline algorithms.
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subjects Algorithms
Conditional Restricted Boltzmann Machine
Forecasting
Performance prediction
time-series data
Training
video service
title Forecasting Service Performance on the Basis of Temporal Information by the Conditional Restricted Boltzmann Machine
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