2022
DOI: 10.1016/j.knosys.2022.109688
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PTrustE: A high-accuracy knowledge graph noise detection method based on path trustworthiness and triple embedding

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Cited by 4 publications
(2 citation statements)
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“…Similarly, studies prefer a Bayesian network as well [37]. VOLUME 11, 2023 The PTrustE [38] presents a different approach by combining rule-based and translation-based studies in a single model. To reveal the features of KG, it first embeds the path information of the entities and then calculates global and local confidence values with the help of the probability logic network.…”
Section: A Closed-world Assumption Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Similarly, studies prefer a Bayesian network as well [37]. VOLUME 11, 2023 The PTrustE [38] presents a different approach by combining rule-based and translation-based studies in a single model. To reveal the features of KG, it first embeds the path information of the entities and then calculates global and local confidence values with the help of the probability logic network.…”
Section: A Closed-world Assumption Methodsmentioning
confidence: 99%
“…To conduct experimental studies, corrupted triples need to be added to the validation set. The generation of corrupted triples was inspired by the approach of DSKRL [34] and PTrustE [38] and generalized to other datasets. The following steps were followed to create these corrupted triples: two triples (h, r 1 , t) and (t, r 2 , s) were randomly selected from the dataset, where h ̸ = s and r 1 ̸ = r 2 .…”
Section: B Generating Corrupted Triples and Confidence Valuesmentioning
confidence: 99%