HCNov 1, 2025

Measuring Machine Companionship: Scale Development and Validation for AI Companions

arXiv:2511.006541 citationsh-index: 2
AI Analysis

Provides a validated measurement tool for researchers studying human-AI relationships, addressing a gap in conceptualization and measurement.

This study developed and validated a novel scale for measuring machine companionship (MC) with AI companions, identifying two factors (Eudaimonic Exchange and Connective Coordination) through exploratory factor analysis with N=467, confirmed in a second sample (N=249).

The mainstreaming of companionable machines--customizable artificial agents designed to participate in ongoing, idiosyncratic, socioemotional relationships--is met with relative theoretical and empirical disarray, according to recent systematic reviews. In particular, the conceptualization and measurement of machine companionship (MC) is inconsistent or sometimes altogether missing. This study starts to bridge that gap by developing and initially validating a novel measurement to capture MC experiences--the unfolding, autotelic, positively experienced, coordinated connection between human and machine--with AI companions (AICs). After systematic generation and expert review of an item pool (including items pertaining to dyadism, coordination, autotelicity, temporality, and positive valence), N = 467 people interacting with AICs responded to the item pool and to construct validation measures. Through exploratory factor analysis, two factors were induced: Eudaimonic Exchange and Connective Coordination. Construct validation analyses (confirmed in a second sample; N = 249) indicate the factors function largely as expected. Post-hoc analyses of deviations suggest two different templates for MC with AICs: One socioinstrumental and one autotelic.

Foundations

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

Your Notes