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Password strength estimation model based on ensemble learning
SONG Chuangchuang, FANG Yong, HUANG Cheng, LIU Liang
Journal of Computer Applications    2018, 38 (5): 1383-1388.   DOI: 10.11772/j.issn.1001-9081.2017102516
Abstract522)      PDF (850KB)(484)       Save
Focused on the issue that the existing password evaluation models cannot be used universally, and there is no evaluation model applicable from simple passwords to very complex passwords. A password evaluation model was designed based on multi-model ensemble learning. Firstly, an actual password training set was used to train multiple existing password evaluation models as the sub-models. Secondly, a multiple trained evaluation sub-models were used as the base learners for ensemble learning, and the ensemble learning strategy which designed to be partial to weakness, was used to get all advantages of sub-models. Finally, a common password evaluation model with high accuracy was obtained. Actual user password set that leaked on the network was used as the experimental data set. The experimental results show that the multi-model ensemble learning model used to evaluate the password strength of different complexity passwords, has a high accuracy and is universal. The proposed model has good applicability in the evaluation of passwords.
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