2019
DOI: 10.1109/jsac.2019.2933781
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Budget-Constrained Edge Service Provisioning With Demand Estimation via Bandit Learning

Abstract: Shared edge computing platforms, which enable Application Service Providers (ASPs) to deploy applications in close proximity to mobile users are providing ultra-low latency and location-awareness to a rich portfolio of services. Though ubiquitous edge service provisioning, i.e., deploying the application at all possible edge sites, is always preferable, it is impractical due to often limited operational budget of ASPs. In this case, an ASP has to cautiously decide where to deploy the edge service and how much … Show more

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Cited by 37 publications
(17 citation statements)
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“…Since these edge servers can implement edge caching by collecting the local service requests in real-time and then use the dynamic information to make intelligent decisions about service reconfiguration with the help of powerful computing ability, including the support for futuristic computationally intensive deep learning algorithms. server in their proposed methods [3], [114], while some others [115], [116] consider a collection of a single MBS with multiple small base stations.…”
Section: ) Heterogeneous Network (Het-net)mentioning
confidence: 99%
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“…Since these edge servers can implement edge caching by collecting the local service requests in real-time and then use the dynamic information to make intelligent decisions about service reconfiguration with the help of powerful computing ability, including the support for futuristic computationally intensive deep learning algorithms. server in their proposed methods [3], [114], while some others [115], [116] consider a collection of a single MBS with multiple small base stations.…”
Section: ) Heterogeneous Network (Het-net)mentioning
confidence: 99%
“…In this approach, the local caching gain is obtained when a requested service is locally available in the cache (either at the SBS or the devices) by serving this service from the cache without connecting to the MBS. In some work, the network model comprises multiple SBSs along with an MBS [115]- [118]. However, the researchers in [84], [119] • Pico base station (PBS): A PBS is a type of SBS that can be used both indoor and outdoor, supporting 32-100 users [24].…”
Section: ) Heterogeneous Network (Het-net)mentioning
confidence: 99%
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“…In [25], an adaptive learning task offloading policy was proposed for vehicle edge computing based on the MAB theory. In [26], the authors considered an edge service replacement problem, where they applied contextual combinatorial MAB to estimate users' demand based on side information. An MAB online learning algorithm referred to as utility-table learning was proposed in [27] to determine the optimal workload balance among MEC servers.…”
Section: Related Workmentioning
confidence: 99%
“…When the system serves a large number of users, the group of user profiles is likely to be very diverse. As another example, contextual MAB has been adopted in service placement of mobile edge computing, which utilizes the time of day and mobile user types as the context (Chen and Xu, 2019).…”
Section: Introductionmentioning
confidence: 99%