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Published in: Innovations in Systems and Software Engineering 1/2019

11-12-2018 | S.I. : CSI2017

The probability of predicting personality traits by the way user types on touch screen

Authors: Soumen Roy, Utpal Roy, D. D. Sinha

Published in: Innovations in Systems and Software Engineering | Issue 1/2019

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Abstract

Age-group, gender, handedness and number of hands used are the common personality traits of a typist, and identifying such traits can be a key in identifying the person in today’s fast world. This particular piece of work is the objective, i.e., an indicative pathway, toward that goal by monitoring and analyzing the way a user types on a touch screen of a smartphone. Study of such traits and analyzing the typing pattern on a conventional computer keyboard has been investigated well. But the conventional keyboard is being replaced with the advent of smartphones with a variety of features, low cost and portability. Therefore, identifying traits through the touch screen is more significant and might be notably beneficial for personal identity prediction and verification. In this paper, we discuss the data acquisition method, classification approach and the evaluation process which are found as more appropriate to discover the trait identities to be used in variety of Web-based applications specifically in the area of e-commerce, online examination, digital forensics, targeted advertisement, age-restricted access control, human–machine interaction, social networks, user identity verification akin to biometrics. Multiple machine learning (ML) methods were used to develop the model, and more suitable and practical evaluation test option—leave-one-user-out cross-validation—was used to check the validity of the proposed model. The efficacy of our approach is illustrated on the dataset collected in the Web-based environment from 92 volunteers. The probability of predicting a user with such traits has also been illustrated here. The study shows timing features of primary keystroke dynamics incorporated with the traits, and the user identification accuracy can be gained up to 17%.

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Appendix
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Literature
1.
go back to reference Bartlow N (2005) Username and password verification through keystroke dynamics. Morgantown, West Virginia Bartlow N (2005) Username and password verification through keystroke dynamics. Morgantown, West Virginia
2.
go back to reference Roy S, Roy U, Sinha DD (2016) Security enhancement of knowledge-based user authentication through keystroke dynamics. In: MATEC Web of Conferences, 2016, vol 57 Roy S, Roy U, Sinha DD (2016) Security enhancement of knowledge-based user authentication through keystroke dynamics. In: MATEC Web of Conferences, 2016, vol 57
3.
go back to reference Giot R, Rosenberger C (2012) A new soft biometric approach for keystroke dynamics based on gender recognition. Int J Inf Technol Manag Spec Issue Adv Trends Biom 11(August):1–16 Giot R, Rosenberger C (2012) A new soft biometric approach for keystroke dynamics based on gender recognition. Int J Inf Technol Manag Spec Issue Adv Trends Biom 11(August):1–16
4.
go back to reference Syed Idrus SZ, Cherrier E, Rosenberger C, Bours P (2014) Soft biometrics for keystroke dynamics: profiling individuals while typing passwords. Comput. Secur 45:147–155CrossRef Syed Idrus SZ, Cherrier E, Rosenberger C, Bours P (2014) Soft biometrics for keystroke dynamics: profiling individuals while typing passwords. Comput. Secur 45:147–155CrossRef
6.
go back to reference Antal M, Nemes G (2016) Gender recognition from mobile biometric data. In: 11th IEEE international symposium on applied computational intelligence and informatics, 2016, pp 243–248 Antal M, Nemes G (2016) Gender recognition from mobile biometric data. In: 11th IEEE international symposium on applied computational intelligence and informatics, 2016, pp 243–248
7.
go back to reference Jain A, Kanhangad V (2016) Investigating gender recognition in smartphones using accelerometer and gyroscope sensor readings. In: 2016 International conference on computational techniques in information and communication technologies. ICCTICT 2016—proceedings, pp 597–602 Jain A, Kanhangad V (2016) Investigating gender recognition in smartphones using accelerometer and gyroscope sensor readings. In: 2016 International conference on computational techniques in information and communication technologies. ICCTICT 2016—proceedings, pp 597–602
8.
go back to reference Kolakowska A, Landowska A, Jarmolkowicz P, Jarmolkowicz M, Sobota K (2016) Automatic recognition of males and females among web browser users based on behavioural patterns of peripherals usage. Internet Res. 26(5):1093–1111CrossRef Kolakowska A, Landowska A, Jarmolkowicz P, Jarmolkowicz M, Sobota K (2016) Automatic recognition of males and females among web browser users based on behavioural patterns of peripherals usage. Internet Res. 26(5):1093–1111CrossRef
9.
go back to reference Giot R et al (2009) GREYC keystroke : a benchmark for keystroke dynamics biometric systems. In: IEEE international conference on biometrics: theory, applications and systems (BTAS 2009) Giot R et al (2009) GREYC keystroke : a benchmark for keystroke dynamics biometric systems. In: IEEE international conference on biometrics: theory, applications and systems (BTAS 2009)
10.
go back to reference Chang C, Lin C (2001) LIBSVM: a library for support vector machines. ACM Trans. Intell. Syst. Technol. 2:1–39CrossRef Chang C, Lin C (2001) LIBSVM: a library for support vector machines. ACM Trans. Intell. Syst. Technol. 2:1–39CrossRef
11.
go back to reference Jain AK, Dass SC, Nandakumar K (2004) Can soft biometric traits assist user recognition? Spie 5404:561–572 Jain AK, Dass SC, Nandakumar K (2004) Can soft biometric traits assist user recognition? Spie 5404:561–572
12.
go back to reference Ailisto H, Vildjiounaite E, Lindholm M, Mäkelä SM, Peltola J (2006) Soft biometrics-combining body weight and fat measurements with fingerprint biometrics. Pattern Recognit. Lett. 27(5):325–334CrossRef Ailisto H, Vildjiounaite E, Lindholm M, Mäkelä SM, Peltola J (2006) Soft biometrics-combining body weight and fat measurements with fingerprint biometrics. Pattern Recognit. Lett. 27(5):325–334CrossRef
13.
go back to reference Park U, Jain A (2010) Face matching and retrival using soft biometrics information forensics and security. IEEE Trans 5(3):406–415 Park U, Jain A (2010) Face matching and retrival using soft biometrics information forensics and security. IEEE Trans 5(3):406–415
14.
go back to reference Li Z, Zhou X, Huang TS (2009) Spatial Gaussian mixture model for gender recognition. In IEEE 16th international conference on image processing (ICIP 2009) Li Z, Zhou X, Huang TS (2009) Spatial Gaussian mixture model for gender recognition. In IEEE 16th international conference on image processing (ICIP 2009)
15.
go back to reference Roy S, Roy U, Sinha D (2018) Identifying soft biometric traits through typing pattern on touchscreen phone. In: Mandal J., Sinha D. (eds), Social transformation—digital way. CSI 2018. Communicaeetions in computer and information science, vol 836. Springer, Singapore Roy S, Roy U, Sinha D (2018) Identifying soft biometric traits through typing pattern on touchscreen phone. In: Mandal J., Sinha D. (eds), Social transformation—digital way. CSI 2018. Communicaeetions in computer and information science, vol 836. Springer, Singapore
16.
go back to reference Roy S, Roy U, Sinha DD (2016) Comparative study of various features-mining-based classifiers in different keystroke dynamics datasets. In: Smart innovation, systems and technologies Roy S, Roy U, Sinha DD (2016) Comparative study of various features-mining-based classifiers in different keystroke dynamics datasets. In: Smart innovation, systems and technologies
17.
go back to reference RC Team (2017) R: a language and environment for statistical computing. In: R foundation for statistical computing, 2017. www.R-project.org. Accessed 13 Oct 2018 RC Team (2017) R: a language and environment for statistical computing. In: R foundation for statistical computing, 2017. www.​R-project.​org. Accessed 13 Oct 2018
Metadata
Title
The probability of predicting personality traits by the way user types on touch screen
Authors
Soumen Roy
Utpal Roy
D. D. Sinha
Publication date
11-12-2018
Publisher
Springer London
Published in
Innovations in Systems and Software Engineering / Issue 1/2019
Print ISSN: 1614-5046
Electronic ISSN: 1614-5054
DOI
https://doi.org/10.1007/s11334-018-0317-6

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