Matches in SemOpenAlex for { <https://semopenalex.org/work/W3146240494> ?p ?o ?g. }
Showing items 1 to 82 of
82
with 100 items per page.
- W3146240494 endingPage "1298" @default.
- W3146240494 startingPage "1288" @default.
- W3146240494 abstract "When a failure occurs in a network element, such as switch, router, and server, network operators need to recognize the service impact, such as time to recovery from the failure or severity of the failure, since service impact is essential information for handling failures. In this paper, we propose Deep learning based Service Impact Prediction system (DeepSIP), which predicts the service impact of network failure in a network element using a temporal multimodal convolutional neural network (CNN). More precisely, DeepSIP predicts the time to recovery from the failure and the loss of traffic volume due to the failure in a network on the basis of information from syslog messages and traffic volume. Since the time to recovery is useful information for a service level agreement (SLA) and the loss of traffic volume is directly related to the severity of the failure, we regard the time to recovery and the loss of traffic volume as the service impact. The service impact is challenging to predict, since it depends on types of network failures and traffic volume when the failure occurs. Moreover, network elements do not explicitly contain any information about the service impact. To extract the type of network failures and predict the service impact, we use syslog messages and past traffic volume. However, syslog messages and traffic volume are also challenging to analyze because these data are multimodal, are strongly correlated, and have temporal dependencies. To extract useful features for prediction, we develop a temporal multimodal CNN. We experimentally evaluated DeepSIP in terms of accuracy by comparing it with other NN-based methods by using synthetic and real datasets. For both datasets, the results show that DeepSIP outperformed the baselines." @default.
- W3146240494 created "2021-04-13" @default.
- W3146240494 creator A5001342072 @default.
- W3146240494 creator A5021085205 @default.
- W3146240494 creator A5055653919 @default.
- W3146240494 date "2021-10-01" @default.
- W3146240494 modified "2023-10-01" @default.
- W3146240494 title "DeepSIP: A System for Predicting Service Impact of Network Failure by Temporal Multimodal CNN" @default.
- W3146240494 cites W1988422940 @default.
- W3146240494 cites W2056291033 @default.
- W3146240494 cites W2124165698 @default.
- W3146240494 cites W2134673568 @default.
- W3146240494 cites W2145563843 @default.
- W3146240494 cites W2214658311 @default.
- W3146240494 cites W2216268987 @default.
- W3146240494 cites W2278186031 @default.
- W3146240494 cites W2480346368 @default.
- W3146240494 cites W2553915786 @default.
- W3146240494 cites W2736937187 @default.
- W3146240494 cites W2762605243 @default.
- W3146240494 cites W2885543487 @default.
- W3146240494 cites W2890072063 @default.
- W3146240494 cites W2962883549 @default.
- W3146240494 cites W2965838158 @default.
- W3146240494 cites W2983275977 @default.
- W3146240494 cites W2999394941 @default.
- W3146240494 cites W3034202167 @default.
- W3146240494 cites W3160434771 @default.
- W3146240494 doi "https://doi.org/10.1587/transcom.2020ebp3177" @default.
- W3146240494 hasPublicationYear "2021" @default.
- W3146240494 type Work @default.
- W3146240494 sameAs 3146240494 @default.
- W3146240494 citedByCount "0" @default.
- W3146240494 crossrefType "journal-article" @default.
- W3146240494 hasAuthorship W3146240494A5001342072 @default.
- W3146240494 hasAuthorship W3146240494A5021085205 @default.
- W3146240494 hasAuthorship W3146240494A5055653919 @default.
- W3146240494 hasBestOaLocation W31462404942 @default.
- W3146240494 hasConcept C121332964 @default.
- W3146240494 hasConcept C124101348 @default.
- W3146240494 hasConcept C136264566 @default.
- W3146240494 hasConcept C162324750 @default.
- W3146240494 hasConcept C20556612 @default.
- W3146240494 hasConcept C2775896111 @default.
- W3146240494 hasConcept C2780378061 @default.
- W3146240494 hasConcept C31258907 @default.
- W3146240494 hasConcept C41008148 @default.
- W3146240494 hasConcept C62520636 @default.
- W3146240494 hasConcept C79403827 @default.
- W3146240494 hasConceptScore W3146240494C121332964 @default.
- W3146240494 hasConceptScore W3146240494C124101348 @default.
- W3146240494 hasConceptScore W3146240494C136264566 @default.
- W3146240494 hasConceptScore W3146240494C162324750 @default.
- W3146240494 hasConceptScore W3146240494C20556612 @default.
- W3146240494 hasConceptScore W3146240494C2775896111 @default.
- W3146240494 hasConceptScore W3146240494C2780378061 @default.
- W3146240494 hasConceptScore W3146240494C31258907 @default.
- W3146240494 hasConceptScore W3146240494C41008148 @default.
- W3146240494 hasConceptScore W3146240494C62520636 @default.
- W3146240494 hasConceptScore W3146240494C79403827 @default.
- W3146240494 hasIssue "10" @default.
- W3146240494 hasLocation W31462404941 @default.
- W3146240494 hasLocation W31462404942 @default.
- W3146240494 hasOpenAccess W3146240494 @default.
- W3146240494 hasPrimaryLocation W31462404941 @default.
- W3146240494 hasRelatedWork W2108950840 @default.
- W3146240494 hasRelatedWork W2130966263 @default.
- W3146240494 hasRelatedWork W2144891654 @default.
- W3146240494 hasRelatedWork W2169905140 @default.
- W3146240494 hasRelatedWork W2350979544 @default.
- W3146240494 hasRelatedWork W2367413907 @default.
- W3146240494 hasRelatedWork W2371048027 @default.
- W3146240494 hasRelatedWork W2489870266 @default.
- W3146240494 hasRelatedWork W2885694335 @default.
- W3146240494 hasRelatedWork W1666542929 @default.
- W3146240494 hasVolume "E104.B" @default.
- W3146240494 isParatext "false" @default.
- W3146240494 isRetracted "false" @default.
- W3146240494 magId "3146240494" @default.
- W3146240494 workType "article" @default.