Public Discourse Sandbox: Facilitating Human and AI Digital Communication Research
- URL: http://arxiv.org/abs/2505.21604v1
- Date: Tue, 27 May 2025 17:46:22 GMT
- Title: Public Discourse Sandbox: Facilitating Human and AI Digital Communication Research
- Authors: Kristina Radivojevic, Caleb Reinking, Shaun Whitfield, Paul Brenner,
- Abstract summary: We introduce the Public Discourse Sandbox (PDS), which serves as a digital discourse research platform for human-AI.<n>PDS provides a safe and secure space for research experiments that are not viable on public, commercial social media platforms.
- Score: 0.26249027950824505
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Social media serves as a primary communication and information dissemination platform for major global events, entertainment, and niche or topically focused community discussions. Therefore, it represents a valuable resource for researchers who aim to understand numerous questions. However, obtaining data can be difficult, expensive, and often unreliable due to the presence of bots, fake accounts, and manipulated content. Additionally, there are ethical concerns if researchers decide to conduct an online experiment without explicitly notifying social media users about their intent. There is a need for more controlled and scalable mechanisms to evaluate the impacts of digital discussion interventions on audiences. We introduce the Public Discourse Sandbox (PDS), which serves as a digital discourse research platform for human-AI as well as AI-AI discourse research, testing, and training. PDS provides a safe and secure space for research experiments that are not viable on public, commercial social media platforms. Its main purpose is to enable the understanding of AI behaviors and the impacts of customized AI participants via techniques such as prompt engineering, retrieval-augmented generation (RAG), and fine-tuning. We provide a hosted live version of the sandbox to support researchers as well as the open-sourced code on GitHub for community collaboration and contribution.
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