CLAISep 27, 2025

$\texttt{BluePrint}$: A Social Media User Dataset for LLM Persona Evaluation and Training

arXiv:2510.02343v17 citationsh-index: 15
Originality Incremental advance
AI Analysis

This provides a foundation for advancing rigorous, ethically responsible social media simulations, particularly for studying challenges like misinformation and polarization in political discourse.

The authors tackled the lack of standardized data for training and evaluating LLMs as realistic social media agents by introducing BluePrint, a large-scale dataset built from public Bluesky data focused on political discourse, which includes 12 social media interaction types and supports context-dependent modeling of user behaviors.

Large language models (LLMs) offer promising capabilities for simulating social media dynamics at scale, enabling studies that would be ethically or logistically challenging with human subjects. However, the field lacks standardized data resources for fine-tuning and evaluating LLMs as realistic social media agents. We address this gap by introducing SIMPACT, the SIMulation-oriented Persona and Action Capture Toolkit, a privacy respecting framework for constructing behaviorally-grounded social media datasets suitable for training agent models. We formulate next-action prediction as a task for training and evaluating LLM-based agents and introduce metrics at both the cluster and population levels to assess behavioral fidelity and stylistic realism. As a concrete implementation, we release BluePrint, a large-scale dataset built from public Bluesky data focused on political discourse. BluePrint clusters anonymized users into personas of aggregated behaviours, capturing authentic engagement patterns while safeguarding privacy through pseudonymization and removal of personally identifiable information. The dataset includes a sizable action set of 12 social media interaction types (likes, replies, reposts, etc.), each instance tied to the posting activity preceding it. This supports the development of agents that use context-dependence, not only in the language, but also in the interaction behaviours of social media to model social media users. By standardizing data and evaluation protocols, SIMPACT provides a foundation for advancing rigorous, ethically responsible social media simulations. BluePrint serves as both an evaluation benchmark for political discourse modeling and a template for building domain specific datasets to study challenges such as misinformation and polarization.

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