The Impact of User Location on Cookie Notices (Inside and Outside of the
European Union)
- URL: http://arxiv.org/abs/2110.09832v1
- Date: Tue, 19 Oct 2021 10:42:39 GMT
- Title: The Impact of User Location on Cookie Notices (Inside and Outside of the
European Union)
- Authors: Rob van Eijk, Hadi Asghari, Philipp Winter, Arvind Narayanan
- Abstract summary: We crawl 1,500 European, American, and Canadian websites from each of 18 countries.
Using a series of regression models, we find that the website's Top Level Domain explains a substantial portion of the variance in cookie notice metrics.
There is one exception to this finding: cookie notices differ when accessing.com domains from inside versus outside of the EU.
- Score: 3.719580143660037
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The web is global, but privacy laws differ by country. Which set of privacy
rules do websites follow? We empirically study this question by detecting and
analyzing cookie notices in an automated way. We crawl 1,500 European,
American, and Canadian websites from each of 18 countries. We detect cookie
notices on 40 percent of websites in our sample. We treat the presence or
absence of cookie notices, as well as visual differences, as proxies for
differences in privacy rules. Using a series of regression models, we find that
the website's Top Level Domain explains a substantial portion of the variance
in cookie notice metrics, but the user's vantage point does not. This suggests
that websites follow one set of privacy rules for all their users. There is one
exception to this finding: cookie notices differ when accessing .com domains
from inside versus outside of the EU. We highlight ways in which future
research could build on our preliminary findings.
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