2020
DOI: 10.1108/ijwis-08-2020-0055
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Optimal path strategy for the web computing under deep reinforcement learning

Abstract: Purpose With the advent of the web computing era, the transmission mode of the Internet of Everything has caused an explosion in data volume, which has brought severe challenges to traditional routing protocols. The limitations of the existing routing protocols under the condition of rapid data growth are elaborated, and the routing problem is remodeled as a Markov decision process. this paper aims to solve the problem of high blocking probability due to the increase in data volume by combining deep reinforcem… Show more

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Cited by 3 publications
(1 citation statement)
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“…Mu et al reconstructed routing problems such as the limitations of routing protocols under the condition of rapid data growth into a Markov decision process, combining deep reinforcement learning to solve the high blocking probability problem caused by increased data volume. Experiments show that this method can significantly reduce the probability of data congestion and improve network throughput [5]. In order to fully utilize multi-channel video transmission, Li H et al proposed a joint optimization method for conversational high-definition video services, taking into account the connection between video coding and transmission.…”
Section: Introductionmentioning
confidence: 99%
“…Mu et al reconstructed routing problems such as the limitations of routing protocols under the condition of rapid data growth into a Markov decision process, combining deep reinforcement learning to solve the high blocking probability problem caused by increased data volume. Experiments show that this method can significantly reduce the probability of data congestion and improve network throughput [5]. In order to fully utilize multi-channel video transmission, Li H et al proposed a joint optimization method for conversational high-definition video services, taking into account the connection between video coding and transmission.…”
Section: Introductionmentioning
confidence: 99%