Your Identity is Your Behavior -- Continuous User Authentication based
on Machine Learning and Touch Dynamics
- URL: http://arxiv.org/abs/2305.09482v1
- Date: Mon, 24 Apr 2023 13:45:25 GMT
- Title: Your Identity is Your Behavior -- Continuous User Authentication based
on Machine Learning and Touch Dynamics
- Authors: Brendan Pelto, Mounika Vanamala, Rushit Dave
- Abstract summary: This research used a dataset of touch dynamics collected from 40 subjects using the LG V30+.
The participants played four mobile games, Diep.io, Slither, and Minecraft, for 10 minutes each game.
The results of the research showed that all three algorithms were able to effectively classify users based on their individual touch dynamics.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The aim of this research paper is to look into the use of continuous
authentication with mobile touch dynamics, using three different algorithms:
Neural Network, Extreme Gradient Boosting, and Support Vector Machine. Mobile
devices are constantly increasing in popularity in the world, today smartphone
subscriptions have surpassed 6 billion. Mobile touch dynamics refer to the
distinct patterns of how a user interacts with their mobile device, this
includes factors such as touch pressure, swipe speed, and touch duration.
Continuous authentication refers to the process of continuously verifying a
user's identity while they are using a device, rather than just at the initial
login. This research used a dataset of touch dynamics collected from 40
subjects using the LG V30+. The participants played four mobile games, PUBG,
Diep.io, Slither, and Minecraft, for 10 minutes each game. The three algorithms
were trained and tested on the extracted dataset, and their performance was
evaluated based on metrics such as accuracy, precision, false negative rate,
and false positive rate. The results of the research showed that all three
algorithms were able to effectively classify users based on their individual
touch dynamics, with accuracy ranging from 80% to 95%. The Neural Network
algorithm performed the best, achieving the highest accuracy and precision
scores, followed closely by XGBoost and SVC. The data shows that continuous
authentication using mobile touch dynamics has the potential to be a useful
method for enhancing security and reducing the risk of unauthorized access to
personal devices. This research also notes the importance of choosing the
correct algorithm for a given dataset and use case, as different algorithms may
have varying levels of performance depending on the specific task.
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