Privacy Policy Analysis through Prompt Engineering for LLMs
Arda Goknil, Femke B. Gelderblom, Simeon Tverdal, Shukun Tokas, Hui, Song

TL;DR
This paper introduces PAPEL, a prompt engineering framework leveraging large language models to analyze privacy policies efficiently, reducing resource needs and enhancing adaptability without additional model training.
Contribution
It presents a novel prompt-based approach for privacy policy analysis using LLMs, enabling annotation and contradiction detection without extensive domain-specific training.
Findings
LLMs achieved F1 scores above 0.8 in annotation tasks
Prompt engineering effectively guides LLMs for policy analysis
Method reduces training effort and improves adaptability
Abstract
Privacy policies are often obfuscated by their complexity, which impedes transparency and informed consent. Conventional machine learning approaches for automatically analyzing these policies demand significant resources and substantial domain-specific training, causing adaptability issues. Moreover, they depend on extensive datasets that may require regular maintenance due to changing privacy concerns. In this paper, we propose, apply, and assess PAPEL (Privacy Policy Analysis through Prompt Engineering for LLMs), a framework harnessing the power of Large Language Models (LLMs) through prompt engineering to automate the analysis of privacy policies. PAPEL aims to streamline the extraction, annotation, and summarization of information from these policies, enhancing their accessibility and comprehensibility without requiring additional model training. By integrating zero-shot,…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cloud Data Security Solutions · Digital Rights Management and Security
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Linear Layer · Cosine Annealing · Multi-Head Attention · Weight Decay · Linear Warmup With Cosine Annealing · Adam · Residual Connection · Byte Pair Encoding
