Variable size sampling to support high uniformity confidence in sensor data streams

In order to rapidly process large amounts of sensor stream data, it is effective to extract and use samples that reflect the characteristics and patterns of the data stream well. In this article, we focus on improving the uniformity confidence of KSample, which has the characteristics of random samp...

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Main Authors: Hajin Kim, Myeong-Seon Gil, Yang-Sae Moon, Mi-Jung Choi
Format: Article
Language:English
Published: SAGE Publishing 2018-04-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1177/1550147718773999
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spelling doaj-c184816495694eefae602620bfad762e2020-11-25T03:32:32ZengSAGE PublishingInternational Journal of Distributed Sensor Networks1550-14772018-04-011410.1177/1550147718773999Variable size sampling to support high uniformity confidence in sensor data streamsHajin KimMyeong-Seon GilYang-Sae MoonMi-Jung ChoiIn order to rapidly process large amounts of sensor stream data, it is effective to extract and use samples that reflect the characteristics and patterns of the data stream well. In this article, we focus on improving the uniformity confidence of KSample, which has the characteristics of random sampling in the stream environment. For this, we first analyze the uniformity confidence of KSample and then derive two uniformity confidence degradation problems: (1) initial degradation, which rapidly decreases the uniformity confidence in the initial stage, and (2) continuous degradation, which gradually decreases the uniformity confidence in the later stages. We note that the initial degradation is caused by the sample range limitation and the past sample invariance , and the continuous degradation by the sampling range increase . For each problem, we present a corresponding solution, that is, we provide the sample range extension for sample range limitation, the past sample change for past sample invariance, and the use of UC-window for sampling range increase. By reflecting these solutions, we then propose a novel sampling method, named UC-KSample , which largely improves the uniformity confidence. Experimental results show that UC-KSample improves the uniformity confidence over KSample by 2.2 times on average, and it always keeps the uniformity confidence higher than the user-specified threshold. We also note that the sampling accuracy of UC-KSample is higher than that of KSample in both numeric sensor data and text data. The uniformity confidence is an important sampling metric in sensor data streams, and this is the first attempt to apply uniformity confidence to KSample. We believe that the proposed UC-KSample is an excellent approach that adopts an advantage of KSample, dynamic sampling over a fixed sampling ratio, while improving the uniformity confidence.https://doi.org/10.1177/1550147718773999
collection DOAJ
language English
format Article
sources DOAJ
author Hajin Kim
Myeong-Seon Gil
Yang-Sae Moon
Mi-Jung Choi
spellingShingle Hajin Kim
Myeong-Seon Gil
Yang-Sae Moon
Mi-Jung Choi
Variable size sampling to support high uniformity confidence in sensor data streams
International Journal of Distributed Sensor Networks
author_facet Hajin Kim
Myeong-Seon Gil
Yang-Sae Moon
Mi-Jung Choi
author_sort Hajin Kim
title Variable size sampling to support high uniformity confidence in sensor data streams
title_short Variable size sampling to support high uniformity confidence in sensor data streams
title_full Variable size sampling to support high uniformity confidence in sensor data streams
title_fullStr Variable size sampling to support high uniformity confidence in sensor data streams
title_full_unstemmed Variable size sampling to support high uniformity confidence in sensor data streams
title_sort variable size sampling to support high uniformity confidence in sensor data streams
publisher SAGE Publishing
series International Journal of Distributed Sensor Networks
issn 1550-1477
publishDate 2018-04-01
description In order to rapidly process large amounts of sensor stream data, it is effective to extract and use samples that reflect the characteristics and patterns of the data stream well. In this article, we focus on improving the uniformity confidence of KSample, which has the characteristics of random sampling in the stream environment. For this, we first analyze the uniformity confidence of KSample and then derive two uniformity confidence degradation problems: (1) initial degradation, which rapidly decreases the uniformity confidence in the initial stage, and (2) continuous degradation, which gradually decreases the uniformity confidence in the later stages. We note that the initial degradation is caused by the sample range limitation and the past sample invariance , and the continuous degradation by the sampling range increase . For each problem, we present a corresponding solution, that is, we provide the sample range extension for sample range limitation, the past sample change for past sample invariance, and the use of UC-window for sampling range increase. By reflecting these solutions, we then propose a novel sampling method, named UC-KSample , which largely improves the uniformity confidence. Experimental results show that UC-KSample improves the uniformity confidence over KSample by 2.2 times on average, and it always keeps the uniformity confidence higher than the user-specified threshold. We also note that the sampling accuracy of UC-KSample is higher than that of KSample in both numeric sensor data and text data. The uniformity confidence is an important sampling metric in sensor data streams, and this is the first attempt to apply uniformity confidence to KSample. We believe that the proposed UC-KSample is an excellent approach that adopts an advantage of KSample, dynamic sampling over a fixed sampling ratio, while improving the uniformity confidence.
url https://doi.org/10.1177/1550147718773999
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