Humans can learn to detect AI-generated texts, or at least learn when they can't
Ji\v{r}\'i Mili\v{c}ka, Anna Marklov\'a, Ond\v{r}ej Drobil, Eva Posp\'i\v{s}ilov\'a

TL;DR
This study demonstrates that people can learn to distinguish AI-generated texts from human-written ones through immediate feedback, which improves accuracy, confidence, and self-assessment, highlighting potential educational applications.
Contribution
It shows that targeted training with explicit feedback enables individuals to better identify AI texts and correct misconceptions about AI stylistic features and readability.
Findings
Immediate feedback improves detection accuracy and confidence.
Participants initially held misconceptions about AI text features.
Feedback reduces errors made when participants felt most confident.
Abstract
This study investigates whether individuals can learn to accurately discriminate between human-written and AI-produced texts when provided with immediate feedback, and if they can use this feedback to recalibrate their self-perceived competence. We also explore the specific criteria individuals rely upon when making these decisions, focusing on textual style and perceived readability. We used GPT-4o to generate several hundred texts across various genres and text types comparable to Koditex, a multi-register corpus of human-written texts. We then presented randomized text pairs to 254 Czech native speakers who identified which text was human-written and which was AI-generated. Participants were randomly assigned to two conditions: one receiving immediate feedback after each trial, the other receiving no feedback until experiment completion. We recorded accuracy in identification,…
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