English

Same Performance, Hidden Bias: Evaluating Hypothesis- and Recommendation-Driven AI

Human-Computer Interaction 2026-03-18 v1

Abstract

The HCI community commonly evaluates decision support systems based on whether they improve task performance or promote appropriate user reliance. In this work, we look beyond decision outcomes to examine the process through which users develop decision-making strategies. Through a web-based experiment (N = 290) comparing recommendation-driven and hypothesis-driven interaction designs, and using Signal Detection Theory as a theoretical framework, we show that even when performance remains identical, recommendation-driven designs lower participants' thresholds for sufficient evidence and introduce a "hidden bias" in their judgments, resulting in a shifted distribution of errors. Furthermore, we find that experts are just as susceptible to these systemic shifts as novices. We conclude by advocating for a shift in focus: prioritizing decision processes and the preservation of stable evidence standards over performance and reliance alone.

Keywords

Cite

@article{arxiv.2603.15824,
  title  = {Same Performance, Hidden Bias: Evaluating Hypothesis- and Recommendation-Driven AI},
  author = {Michaela Benk and Tim Miller},
  journal= {arXiv preprint arXiv:2603.15824},
  year   = {2026}
}

Comments

Accepted at the CHI 2026 Workshop on Understanding, Mitigating, and Leveraging Cognitive Biases to Calibrate Trust in Evolving AI Systems

R2 v1 2026-07-01T11:23:05.497Z