TOUCH BASED AGE ANALYZATION ON MOBILE PHONES USING MACHINE LEARNING ALGORITHMS

Published 30 Sep 2019 •  vol 12  •  no 9  • 


Authors:

 

B. Dinesh Reddy, Department of Computer Science and Engineering, Vignan’s Institute of Information Technology (A), India
Thotakura Madhuri, Department of Computer Science and Engineering, Vignan’s Institute of Information Technology (A), India
N. Thirupathi Rao, Department of Computer Science and Engineering, Vignan’s Institute of Information Technology (A), India
Debnath Bhattacharyya, Department of Computer Science and Engineering, Vignan’s Institute of Information Technology (A), India

Abstract:

 

Smart devices are wherever these days, as Android is an open and free Linux based working framework, generally utilized for cell phones like advanced mobile phones and tablets, where the Android assumes a predominant job in this portable period. In this article, it depicts singular age dependent upon the age of the individual we get the pertinent program data. The preparing of this information or data obtained from the application is secured in a server. From the server we separate the data and after that we train the model by using Machine Learning in order to anticipate the data i.e., we analyze the person's age.

Keywords:

 

Android, Server, Model, Machine Learning, Dendrogram, Event

References:

 

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Citations:

 

APA:
Reddy, B. D., Madhuri, T., Rao, N. T., & Bhattacharyya, D. (2019). Touch Based Age Analyzation on Mobile Phones using Machine Learning Algorithms. International Journal of Control and Automation (IJCA), ISSN: 2005-4297 (Print); 2207-6387 (Online), NADIA, 12(9), 41-52. doi: 10.33832/ijca.2019.12.9.05.

MLA:
Reddy, B. Dinesh, et al. “Touch Based Age Analyzation on Mobile Phones using Machine Learning Algorithms.” International Journal of Control and Automation, ISSN: 2005-4297 (Print); 2207-6387 (Online), NADIA, vol. 12, no. 9, 2019, pp. 41-52. IJCA, http://article.nadiapub.com/IJCA/vol12_no9/5.html.

IEEE:
[1] B. Dinesh Reddy, T. Madhuri, N. Thirupathi Rao, and D. Bhattacharyya, "Touch Based Age Analyzation on Mobile Phones using Machine Learning Algorithms." International Journal of Control and Automation (IJCA), ISSN: 2005-4297 (Print); 2207-6387 (Online), NADIA, vol. 12, no. 9, pp. 41-52, Sep 2019.