Learning-Based Caching Plan of Popular Videos for Mobile Users
碩士 === 國立清華大學 === 資訊系統與應用研究所 === 104 === Mobile traffic has grown fast in recent years, particularly for delivering popular video clips. Based on a combination of Macro Cells and various Small Cell (SC) technologies, Hyper-dense Heterogeneous Networks (HetNets) is gaining increasing attention due to...
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ndltd-TW-104NTHU53940242017-08-27T04:30:16Z http://ndltd.ncl.edu.tw/handle/35446305871880772616 Learning-Based Caching Plan of Popular Videos for Mobile Users 以學習為基礎的熱門影片快取暫存機制 Chen, Yi Ting 陳怡婷 碩士 國立清華大學 資訊系統與應用研究所 104 Mobile traffic has grown fast in recent years, particularly for delivering popular video clips. Based on a combination of Macro Cells and various Small Cell (SC) technologies, Hyper-dense Heterogeneous Networks (HetNets) is gaining increasing attention due to huge demand and popularity of mobile video traffic. To avoid bottleneck in the limited capacity of backhaul link to the core network, caching in the network edge in such a way that the buffered video can be delivered with less network latency and traffic load is very promising. A learning-based caching plan, on the basis of users’ preferences may not subject to change rapidly, is proposed in the thesis. Our goal is to build a distributed caching plan for serving popular video clips over HetNets with least possible backhaul traffic. In the learning phase of the proposed learning-based method, cluster and assign similar users to SCs using spectral clustering first. Second aggregate the users’ requests to be the request profile of the corresponding SCs. Third, share the caching space among cooperated SCs with the help of distributed LT codes. During the serving phase, new coming users will be assigned to appropriate SCs based on similarity between users and SCs. However, the assignment of old users remains the same on the assumption that users’ preferences do not subject to change rapidly. Moreover, the clustering information can be applied to another application that several users can share downloading cooperatively if a group of smartphone users request watching the same video clips almost the same time, subsequent decreases the load of backhaul bandwidth. Wang, Jia Shung 王家祥 2016 學位論文 ; thesis 35 en_US |
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碩士 === 國立清華大學 === 資訊系統與應用研究所 === 104 === Mobile traffic has grown fast in recent years, particularly for delivering popular video clips. Based on a combination of Macro Cells and various Small Cell (SC) technologies, Hyper-dense Heterogeneous Networks (HetNets) is gaining increasing attention due to huge demand and popularity of mobile video traffic. To avoid bottleneck in the limited capacity of backhaul link to the core network, caching in the network edge in such a way that the buffered video can be delivered with less network latency and traffic load is very promising. A learning-based caching plan, on the basis of users’ preferences may not subject to change rapidly, is proposed in the thesis. Our goal is to build a distributed caching plan for serving popular video clips over HetNets with least possible backhaul traffic.
In the learning phase of the proposed learning-based method, cluster and assign similar users to SCs using spectral clustering first. Second aggregate the users’ requests to be the request profile of the corresponding SCs. Third, share the caching space among cooperated SCs with the help of distributed LT codes. During the serving phase, new coming users will be assigned to appropriate SCs based on similarity between users and SCs. However, the assignment of old users remains the same on the assumption that users’ preferences do not subject to change rapidly. Moreover, the clustering information can be applied to another application that several users can share downloading cooperatively if a group of smartphone users request watching the same video clips almost the same time, subsequent decreases the load of backhaul bandwidth.
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Wang, Jia Shung |
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Wang, Jia Shung Chen, Yi Ting 陳怡婷 |
author |
Chen, Yi Ting 陳怡婷 |
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Chen, Yi Ting 陳怡婷 Learning-Based Caching Plan of Popular Videos for Mobile Users |
author_sort |
Chen, Yi Ting |
title |
Learning-Based Caching Plan of Popular Videos for Mobile Users |
title_short |
Learning-Based Caching Plan of Popular Videos for Mobile Users |
title_full |
Learning-Based Caching Plan of Popular Videos for Mobile Users |
title_fullStr |
Learning-Based Caching Plan of Popular Videos for Mobile Users |
title_full_unstemmed |
Learning-Based Caching Plan of Popular Videos for Mobile Users |
title_sort |
learning-based caching plan of popular videos for mobile users |
publishDate |
2016 |
url |
http://ndltd.ncl.edu.tw/handle/35446305871880772616 |
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