CYAICLHCJun 20, 2025

From Prompts to Constructs: A Dual-Validity Framework for LLM Research in Psychology

arXiv:2506.16697v13 citationsh-index: 2
Originality Synthesis-oriented
AI Analysis

This addresses the risk of measurement phantoms in AI psychology research, offering a foundational framework for improving validation standards, though it is incremental in building on existing principles.

The paper tackles the problem of contradictory results when applying human measurement tools to large language models (LLMs) in psychology, proposing a dual-validity framework to integrate reliable measurement and causal inference for scaling evidence with scientific ambition.

Large language models (LLMs) are rapidly being adopted across psychology, serving as research tools, experimental subjects, human simulators, and computational models of cognition. However, the application of human measurement tools to these systems can produce contradictory results, raising concerns that many findings are measurement phantoms--statistical artifacts rather than genuine psychological phenomena. In this Perspective, we argue that building a robust science of AI psychology requires integrating two of our field's foundational pillars: the principles of reliable measurement and the standards for sound causal inference. We present a dual-validity framework to guide this integration, which clarifies how the evidence needed to support a claim scales with its scientific ambition. Using an LLM to classify text may require only basic accuracy checks, whereas claiming it can simulate anxiety demands a far more rigorous validation process. Current practice systematically fails to meet these requirements, often treating statistical pattern matching as evidence of psychological phenomena. The same model output--endorsing "I am anxious"--requires different validation strategies depending on whether researchers claim to measure, characterize, simulate, or model psychological constructs. Moving forward requires developing computational analogues of psychological constructs and establishing clear, scalable standards of evidence rather than the uncritical application of human measurement tools.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes