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Universidade do Minho - Repositório Institucional >
Escola de Engenharia da Universidade do Minho | School of Engineering of the University of Minho >
Departamento de Sistemas de Informação >
DSI - Sociedade da Informação >
Please use this identifier to cite or link to this item:
http://hdl.handle.net/1822/6388
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| Title: | A machine learning approach to keystroke dynamics based user authentication |
| Authors: | Revett, Kenneth Gorunescu, Florin Gorunescu, Marina Ene, Marius Magalhães, Paulo Sérgio Santos, Henrique Dinis dos |
| Keywords: | Biometrics Equal error rate Keystroke dynamics Probabilistic neural networks |
| Issue date: | 2007 |
| Publisher: | Inderscience |
| Citation: | "International journal of electronic security and digital forensics". ISSN 1751-9128. 1:1 (2007).55-70. |
| Abstract: | The majority of computer systems employ a login ID and password as the principal method for access security. In stand-alone situations, this level of security may be adequate, but when computers are connected to the
internet, the vulnerability to a security breach is increased. In order to reduce vulnerability to attack, biometric solutions have been employed. In this paper, we investigate the use of a behavioural biometric based on keystroke dynamics. Although there are several implementations of keystroke
dynamics available - their effectiveness is variable and dependent on the data sample and its acquisition methodology. The results from this study indicate that the Equal Error Rate (EER) is significantly influenced by the
attribute selection process and to a lesser extent on the authentication algorithm
employed. Our results also provide evidence that a Probabilistic Neural Network (PNN) can be superior in terms of reduced training time and classification accuracy when compared with a typical MLFN back-propagation
trained neural network. |
| Type: | article |
| URI: | http://hdl.handle.net/1822/6388 |
| ISSN: | 1751-9128 |
| Peer-Reviewed: | yes |
| Appears in Collections: | DSI - Sociedade da Informação
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