2019
DOI: 10.1109/jiot.2018.2875670
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Interference Hypergraph-Based Resource Allocation (IHG-RA) for NOMA-Integrated V2X Networks

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Cited by 74 publications
(47 citation statements)
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“…The authors then derived a closed-form expression for the outage probability, where the NOMA-enabled V2X system outperformed the conventional OMA-enabled system. References [13] and [14] applied a centralized resource allocation scheme to improve the sum rate of D2D-enhanced V2X NOMA networks. The authors first constructed an interference hypergraph to model interference environment and, based on this constructed hypergraph model, a cluster coloring algorithm for interference hyper-graph resource management scheme was investigated.…”
Section: A Recent Workmentioning
confidence: 99%
“…The authors then derived a closed-form expression for the outage probability, where the NOMA-enabled V2X system outperformed the conventional OMA-enabled system. References [13] and [14] applied a centralized resource allocation scheme to improve the sum rate of D2D-enhanced V2X NOMA networks. The authors first constructed an interference hypergraph to model interference environment and, based on this constructed hypergraph model, a cluster coloring algorithm for interference hyper-graph resource management scheme was investigated.…”
Section: A Recent Workmentioning
confidence: 99%
“…In a graph or network, clusters are typically groups of vertices with a higher probability of connecting to each other than to members of other groups, although other patterns are possible [2]. Clusters have many application scenarios in the Internet of Things [3], including sensor networks [4], vehicular ad hoc networks [5]- [7], and in-vehicle networks [8]- [10]. Community detection can be viewed as a problem of graph clustering in which each community corresponds to a cluster in the graph [11], [12].…”
Section: A Backgroundmentioning
confidence: 99%
“…These interactions correspond to induced subgraphs of networks that contain multiple vertices and edges and represent the information from different interactions among multiple vertices, and this kind of subgraph is also refered to as a motif [18]. The motif of a network is crucial to organization of complex networks [19], [20] and has a wide range of application scenarios in many fields, such as carbon exchange models in food chains, resource allocation in the Internet of Things [7], and analysis of small structures in social networks [21]. The use of motifs as atomic units in graph clustering is known as higher-order graph clustering.…”
Section: A Backgroundmentioning
confidence: 99%
“…Sharing of bandwidth improves the spectral efficiency and more users can be accommodated at once. The capacity of the system can be enhanced by implementing NOMA by means of reducing the interference caused by the sharing user(s) in the same group via successive interference cancellation (SIC) [12][13][14][15][16][17]. Interference, without SIC, tend to grow worse when many users access the system at the same time.…”
Section: Introductionmentioning
confidence: 99%