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Cybersecurity NER SecureBERT model

This method includes a Python script and files of a SecureBERT model fine-tuned on our Cybersecurity NER dataset. The method requires as input a list of sentences that will be fed to the model. The method's output is a list of predictions, i.e. the labels assigned to each token of each of the sentences fed to the model. INPUT= sentences: string[] OUTPUT= predictions: list(list(dict(string, string))) SecureBERT is a cybersecurity language model that successfully automates many crucial cybersecurity operations that would otherwise require human expertise and time-consuming manual efforts. It does this by capturing text connotations in cybersecurity text.

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Additional Info
Field Value
Accessibility Both
AccessibilityMode Download
Availability On-Line
Basic rights Download
CreationDate 2024-06-20 12:00
Creator Russo, Giuseppe Felice, [email protected], orcid.org/0009-0001-2090-9647
Field/Scope of use Non-commercial research only
Group Pervasive Intelligence in Cyber-Physical Systems for Future Society
License term 2024-06-21 12:10/2027-06-21 12:10
Owner Russo, Giuseppe Felice, [email protected], orcid.org/0009-0001-2090-9647
ProgrammingLanguage Python
Semantic Coverage Cybersecurity
SoBigData Node SoBigData EU
SoBigData Node SoBigData IT
Sublicense rights No
Territory of use World Wide
Thematic Cluster Web Analytics [WA]
input sentences: string[]
output predictions: list(list(dict(string, string)))
system:type Method
Management Info
Field Value
Author Russo Giuseppe Felice
Maintainer Russo Giuseppe Felice
Version 1
Last Updated 23 November 2024, 16:03 (CET)
Created 23 November 2024, 16:03 (CET)