Paper Abstract and Keywords |
Presentation |
2022-10-31 15:00
[Poster Presentation]
Measurement error detection by machine learning suitable for QoE based network control Yu Yamaguchi (Kyutech), Yuzo Taenaka (NAIST), Kazuya Tsukamoto (Kyutech) |
Abstract |
(in Japanese) |
(See Japanese page) |
(in English) |
With the diversification of applications, network control based on QoE, which can uniformly evaluate application quality, has been attracting attention. In our previous study, we proposed a method for estimating and utilizing the QoE of video in a software-defined network (SDN). However, SDNs inevitably suffer from measurement errors in packet loss due to timing differences in the acquisition of statistical information, and the accuracy of QoE estimation for video, for which packet loss is an important metric, is significantly degraded. Therefore, in this study, we first conducted a comprehensive survey of factors related to the occurrence of measurement errors, and then By using the identified factors as machine learning features, we aim to enable real-time measurement error correction during QoE estimation. We show that there is a significant relationship between jitter in the network between SDN controllers and switches and the occurrence of measurement error, and create a learner that determines measurement error based on this relationship. The results of the study show that jitter in one direction from the SDN controller to the switch is correlated with measurement error, and we propose a method to estimate this one-way jitter. We also show that it is possible to determine the measurement error by using the one-way jitter obtained from the experiments as a feature. |
Keyword |
(in Japanese) |
(See Japanese page) |
(in English) |
Quality of Experience / Software Defined Network / Machine Leaning / / / / / |
Reference Info. |
IEICE Tech. Rep. |
Paper # |
|
Date of Issue |
|
ISSN |
|
Download PDF |
|
Conference Information |
Committee |
RISING |
Conference Date |
2022-10-31 - 2022-11-02 |
Place (in Japanese) |
(See Japanese page) |
Place (in English) |
Kyoto Terrsa (Day 1), and Online (Day 2, 3) |
Topics (in Japanese) |
(See Japanese page) |
Topics (in English) |
|
Paper Information |
Registration To |
RISING |
Conference Code |
2022-10-RISING |
Language |
Japanese |
Title (in Japanese) |
(See Japanese page) |
Sub Title (in Japanese) |
(See Japanese page) |
Title (in English) |
Measurement error detection by machine learning suitable for QoE based network control |
Sub Title (in English) |
|
Keyword(1) |
Quality of Experience |
Keyword(2) |
Software Defined Network |
Keyword(3) |
Machine Leaning |
Keyword(4) |
|
Keyword(5) |
|
Keyword(6) |
|
Keyword(7) |
|
Keyword(8) |
|
1st Author's Name |
Yu Yamaguchi |
1st Author's Affiliation |
Kyushu Institute of Technology (Kyutech) |
2nd Author's Name |
Yuzo Taenaka |
2nd Author's Affiliation |
Nara Institute of Science and Technology (NAIST) |
3rd Author's Name |
Kazuya Tsukamoto |
3rd Author's Affiliation |
Kyushu Institute of Technology (Kyutech) |
4th Author's Name |
|
4th Author's Affiliation |
() |
5th Author's Name |
|
5th Author's Affiliation |
() |
6th Author's Name |
|
6th Author's Affiliation |
() |
7th Author's Name |
|
7th Author's Affiliation |
() |
8th Author's Name |
|
8th Author's Affiliation |
() |
9th Author's Name |
|
9th Author's Affiliation |
() |
10th Author's Name |
|
10th Author's Affiliation |
() |
11th Author's Name |
|
11th Author's Affiliation |
() |
12th Author's Name |
|
12th Author's Affiliation |
() |
13th Author's Name |
|
13th Author's Affiliation |
() |
14th Author's Name |
|
14th Author's Affiliation |
() |
15th Author's Name |
|
15th Author's Affiliation |
() |
16th Author's Name |
|
16th Author's Affiliation |
() |
17th Author's Name |
|
17th Author's Affiliation |
() |
18th Author's Name |
|
18th Author's Affiliation |
() |
19th Author's Name |
|
19th Author's Affiliation |
() |
20th Author's Name |
|
20th Author's Affiliation |
() |
Speaker |
Author-1 |
Date Time |
2022-10-31 15:00:00 |
Presentation Time |
45 minutes |
Registration for |
RISING |
Paper # |
|
Volume (vol) |
vol. |
Number (no) |
|
Page |
|
#Pages |
|
Date of Issue |
|
|