Gender Identification of Mobile Phone Users based on Internet Usage Pattern

Publish Year: 1402
نوع سند: مقاله ژورنالی
زبان: English
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JR_IJE-36-2_013

تاریخ نمایه سازی: 24 دی 1401

Abstract:

Gender is an important aspect of a person's identity. In many applications, gender identification is useful for personalizing services and recommendations. On the other hand, many people today spend a lot of time on their mobile phones. Studies have shown that the way users interact with mobile phones is influenced by their gender. But the existing methods for identify the gender of mobile phone users are either not accurate enough or require sensors and specific user activities. In this paper, for the first time, the internet usage patterns are used to identify the gender of mobile phone users. To this end, the interaction data, and specially the internet usage patterns of a random sample of people are automatically recorded by an application installed on their mobile phones. Then, the gender identification is modeled using different machine learning classification methods. The evaluations showed that the internet features play an important role in recognizing the users gender. The linear support vector machine was the superior classifier with the accuracy of ۸۵% and F-measure of ۸۵%.

Authors

F. Negaresh

Faculty of Computer Engineering, University of Isfahan, Azadi Sq., Hezarjarib St., Isfahan, Iran

M. Kaedi

Faculty of Computer Engineering, University of Isfahan, Azadi Sq., Hezarjarib St., Isfahan, Iran

Z. Zojaji

Faculty of Computer Engineering, University of Isfahan, Azadi Sq., Hezarjarib St., Isfahan, Iran

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  • Jain, A. and Kanhangad, V., "Gender recognition in smartphones using ...
  • Nguyen-Quoc, H. and Hoang, VT., "Gender recognition based on ear ...
  • Jain, A. and Kanhangad, V., "Investigating gender recognition in smartphones ...
  • Sarraute, C., Blanc, P. and Burroni, J., "A study of ...
  • Choi, Y., Kim, Y., Kim, S., Park, K. and Park, ...
  • Piot-Perez-Abadin, P., Martín-Rodilla, P. and Parapar, J., "Experimental analysis of ...
  • Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., ...
  • Kowsari, K., Heidarysafa, M., Odukoya, T., Potter, P., Barnes, L.E. ...
  • Safara, F., Mohammed, A.S., Potrus, M.Y., Ali, S., Tho, Q.T., ...
  • Breiman, L., Classification and regression trees, Wadsworth Stat Ser ۳۵۸, ...
  • Han, J., Pei, J. and Kamber, M., Data mining: concepts ...
  • Jo, T., Machine Learning Foundations: Supervised, Unsupervised, and Advanced Learning, ...
  • Yadav, S. and Shukla, S., "Analysis of k-fold cross-validation over ...
  • Hamidi, H. and Rafebakhsh, M. S. “Analyzing factors influencing mobile ...
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  • Wang, Z., Hu, Y., Zheng, H., Yuan, K., Du, X. ...
  • Hafkin, N. J. and Huyer, S. “Women and gender in ...
  • Becker, J. B., McClellan, M. and Reed, B. G. “Sociocultural ...
  • Jang, M. H. and Ji, E. S. “Gender differences in ...
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