Fingerprinting and Tracing Shadows: The Development and Impact of Browser Fingerprinting on Digital Privacy
- URL: http://arxiv.org/abs/2411.12045v1
- Date: Mon, 18 Nov 2024 20:32:31 GMT
- Title: Fingerprinting and Tracing Shadows: The Development and Impact of Browser Fingerprinting on Digital Privacy
- Authors: Alexander Lawall,
- Abstract summary: Browser fingerprinting is a growing technique for identifying and tracking users online without traditional methods like cookies.
This paper gives an overview by examining the various fingerprinting techniques and analyzes the entropy and uniqueness of the collected data.
- Score: 55.2480439325792
- License:
- Abstract: Browser fingerprinting is a growing technique for identifying and tracking users online without traditional methods like cookies. This paper gives an overview by examining the various fingerprinting techniques and analyzes the entropy and uniqueness of the collected data. The analysis highlights that browser fingerprinting poses a complex challenge from both technical and privacy perspectives, as users often have no control over the collection and use of their data. In addition, it raises significant privacy concerns as users are often tracked without their knowledge or consent.
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