AbhilashaRavichander/PrivacyQA_EMNLP
PrivacyQA, a resource to support question-answering over privacy policies.
This project provides a comprehensive dataset to help develop automated systems that can answer specific questions about privacy policies. It takes in privacy policy text and user questions, and helps train a system to pinpoint the most relevant sentences in the policy that answer those questions. This is invaluable for legal researchers, privacy advocates, or anyone aiming to make complex privacy policies more understandable and accessible to the public.
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Use this if you are a researcher or developer building an AI system to automatically extract answers from privacy policies based on user questions.
Not ideal if you are looking for a ready-to-use application to answer your own privacy policy questions immediately; this is a dataset for building such tools.
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MIT
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Last pushed
Apr 05, 2020
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