Datensouver\"anit\"at f\"ur Verbraucher:innen: Technische Ans\"atze
durch KI-basierte Transparenz und Auskunft im Kontext der DSGVO
- URL: http://arxiv.org/abs/2112.03879v1
- Date: Tue, 7 Dec 2021 18:18:19 GMT
- Title: Datensouver\"anit\"at f\"ur Verbraucher:innen: Technische Ans\"atze
durch KI-basierte Transparenz und Auskunft im Kontext der DSGVO
- Authors: Elias Gr\"unewald, Frank Pallas
- Abstract summary: The EU General Data Protection Regulation guarantees comprehensive data subject rights.
Traditional approaches, such as the provision of lengthy data protection declarations, do not meet the requirements of informational self-determination.
For this purpose, the relevant transparency information is extracted in a semi-automated way, represented in a machine-readable format, and then played out via diverse channels such as virtual assistants.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A sufficient level of data sovereignty is extremely difficult for consumers
in practice. The EU General Data Protection Regulation guarantees comprehensive
data subject rights, which must be implemented by responsible controllers
through technical and organizational measures. Traditional approaches, such as
the provision of lengthy data protection declarations or the downloading of raw
personal data without further assistance, do not meet the requirements of
informational self-determination. The new technical approaches outlined below,
in particular AI-based transparency and access modalities, demonstrate the
practicability of effective and versatile mechanisms. For this purpose, the
relevant transparency information is extracted in a semi-automated way,
represented in a machine-readable format, and then played out via diverse
channels such as virtual assistants or the enrichment of search results.
---
Hinreichende Datensouver\"anit\"at gestaltet sich f\"ur Verbraucher:innen in
der Praxis als \"au{\ss}erst schwierig. Die Europ\"aische
Datenschutzgrundverordnung garantiert umfassende Betroffenenrechte, die von
verantwortlichen Stellen durch technisch-organisatorische Ma{\ss}nahmen
umzusetzen sind. Traditionelle Vorgehensweisen wie die Bereitstellung
l\"anglicher Datenschutzerkl\"arungen oder der ohne weitere Hilfestellungen
angebotene Download von personenbezogenen Rohdaten werden dem Anspruch der
informationellen Selbstbestimmung nicht gerecht. Die im Folgenden aufgezeigten
neuen technischen Ans\"atze insbesondere KI-basierter Transparenz- und
Auskunftsmodalit\"aten zeigen die Praktikabilit\"at wirksamer und vielseitiger
Mechanismen. Hierzu werden die relevanten Transparenzangaben teilautomatisiert
extrahiert, maschinenlesbar repr\"asentiert und anschlie{\ss}end \"uber diverse
Kan\"ale wie virtuelle Assistenten oder die Anreicherung von Suchergebnissen
ausgespielt.
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