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Hauptverfasser: Yu, Sunny, Cheng, Myra, Jabbar, Ahmad, Sucholutsky, Ilia, Collins, Katherine M., Jurafsky, Dan, Hawkins, Robert D.
Format: Preprint
Veröffentlicht: 2026
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2605.22687
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author Yu, Sunny
Cheng, Myra
Jabbar, Ahmad
Sucholutsky, Ilia
Collins, Katherine M.
Jurafsky, Dan
Hawkins, Robert D.
author_facet Yu, Sunny
Cheng, Myra
Jabbar, Ahmad
Sucholutsky, Ilia
Collins, Katherine M.
Jurafsky, Dan
Hawkins, Robert D.
contents People are increasingly turning to AI assistance for simple tasks, e.g., arithmetic, spell-check, and answering simple questions. But does AI assistance actually save users time and effort? We investigate people's propensity to use AI for cognitively simple tasks and assess whether their reliance is well-calibrated. Across three pre-registered user studies (N = 2691), we find that people frequently choose to use AI even when doing so is inefficient (i.e. provides no meaningful time or effort savings). We identify systematic miscalibration at two levels: (1) a self-estimate miscalibration where people on average believe that they are using AI less than they actually are, and (2) efficiency-gain illusions where people overestimate how much time and effort savings AI use affords. We also identify a session-level carryover effect where a participant's prior AI use leads to further AI adoption and entrenches their miscalibration about time savings. Our results shed light on the mechanisms and biases underlying people's choice of whether to use AI as well as the risk of an overreliance feedback loop.
format Preprint
id arxiv_https___arxiv_org_abs_2605_22687
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The efficiency-gain illusion: People underestimate the rate of AI use and overestimate its benefits on simple tasks
Yu, Sunny
Cheng, Myra
Jabbar, Ahmad
Sucholutsky, Ilia
Collins, Katherine M.
Jurafsky, Dan
Hawkins, Robert D.
Computers and Society
Human-Computer Interaction
People are increasingly turning to AI assistance for simple tasks, e.g., arithmetic, spell-check, and answering simple questions. But does AI assistance actually save users time and effort? We investigate people's propensity to use AI for cognitively simple tasks and assess whether their reliance is well-calibrated. Across three pre-registered user studies (N = 2691), we find that people frequently choose to use AI even when doing so is inefficient (i.e. provides no meaningful time or effort savings). We identify systematic miscalibration at two levels: (1) a self-estimate miscalibration where people on average believe that they are using AI less than they actually are, and (2) efficiency-gain illusions where people overestimate how much time and effort savings AI use affords. We also identify a session-level carryover effect where a participant's prior AI use leads to further AI adoption and entrenches their miscalibration about time savings. Our results shed light on the mechanisms and biases underlying people's choice of whether to use AI as well as the risk of an overreliance feedback loop.
title The efficiency-gain illusion: People underestimate the rate of AI use and overestimate its benefits on simple tasks
topic Computers and Society
Human-Computer Interaction
url https://arxiv.org/abs/2605.22687