Abstract
Human-factor analysis typically employs correlation analysis and significance testing to identify relationships between variables. However, these descriptive (‘what-is’) methods, while effective for identifying associations, are often insufficient for answering causal (‘what-if’) questions. Their application in such contexts often overlooks confounding and colliding variables, potentially leading to bias and suboptimal or incorrect decisions. We advocate for explicitly distinguishing descriptive from interventional questions in human-factor analysis, and applying causal inference frameworks specifically to these problems to prevent methodological mismatches. This approach disentangles complex variable relationships and enables counterfactual reasoning. Using post-occupancy evaluation (POE) data from the Center for the Built Environment's (CBE) Occupant Survey as a demonstration case, we show how causal discovery generates testable hypotheses about intervention hierarchies and directional relationships that traditional associational analysis cannot explore. The systematic distinction between causally associated and independent variables, combined with intervention prioritization capabilities, offers broad applicability to complex human-centric systems, for example, in building science or ergonomics, where understanding intervention effects is critical for optimization and decision-making.
| Original language | English |
|---|---|
| Article number | 114285 |
| Journal | Building and environment |
| Volume | 292 |
| E-pub ahead of print | 27 Jan 2026 |
| DOIs | |
| Publication status | Published - 15 Mar 2026 |
Keywords
- Building science
- Causal inference
- Counterfactual reasoning
- Decision-making
- Engineering analysis
- Post-Occupancy Evaluation (POE)
ASJC Scopus subject areas
- Environmental Engineering
- Civil and Structural Engineering
- Geography, Planning and Development
- Building and Construction
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