2022
DOI: 10.1155/2022/2163458
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Deep Learning Approaches for Cyberbullying Detection and Classification on Social Media

Abstract: As a result of the ease with which the internet and cell phones can be accessed, online social networks (OSN) and social media have seen a significant increase in popularity in recent years. Security and privacy, on the other hand, are the key concerns in online social networks and other social media platforms. On the other hand, cyberbullying (CB) is a serious problem that needs to be addressed on social media platforms. Known as cyberbullying (CB), it is defined as a repetitive, purposeful, and aggressive re… Show more

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Cited by 30 publications
(7 citation statements)
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“…In this section, a wide-ranging comparison study of the model is carried out under varying numbers of sensor nodes (SNs). Table 1 provides detailed results of the MHCRT-EEWSN model with existing models in terms of end-to-end delay (ETED), packet delivery ratio (PDR), and packet loss rate (PLR) [21][22][23][24][25]. SNs, the MHCRT-EEWSN model has attained effectual outcomes with minimal ETED of 1.36ms whereas the LEACH, HEED, MBC, FRLDG, and F-GWO models have obtained maximum ETED of 6.15ms, 5.18ms, 4.09ms, 3.39ms, and 2.14ms respectively.…”
Section: Resultsmentioning
confidence: 99%
“…In this section, a wide-ranging comparison study of the model is carried out under varying numbers of sensor nodes (SNs). Table 1 provides detailed results of the MHCRT-EEWSN model with existing models in terms of end-to-end delay (ETED), packet delivery ratio (PDR), and packet loss rate (PLR) [21][22][23][24][25]. SNs, the MHCRT-EEWSN model has attained effectual outcomes with minimal ETED of 1.36ms whereas the LEACH, HEED, MBC, FRLDG, and F-GWO models have obtained maximum ETED of 6.15ms, 5.18ms, 4.09ms, 3.39ms, and 2.14ms respectively.…”
Section: Resultsmentioning
confidence: 99%
“…Local surrogate models are interpretable models. Individual predictions of black box machine learning algorithms are explained using local surrogate models 35,36 . LIME, or local interpretable model‐agnostic explanations, explains the predictions of any classifier or regressor locally with an interpretable model.…”
Section: Methodsmentioning
confidence: 99%
“…Individual predictions of black box machine learning algorithms are explained using local surrogate models. 35,36 The training data, single test instance, and DNN-CKD predictions are fed as input to the explainable technique. LIME tweaks the feature values in a single CKD data sample to see how they affect the results.…”
Section: Limementioning
confidence: 99%
“…In an effort to decrease the number of test instances, coverage criteria and searches are employed in all of the cited publications. Wotawa et al [23] developed an alternate test suite reduction strategy employing glue sequences to join small trial cases in a test suite and minimize overall assesement suite. Because of this, they can speed up test execution, especially in circumstances when the start-up procedure takes more time than the entire system itself.…”
Section: Engström Et Al's Regressionmentioning
confidence: 99%