Listening for Expert Identified Linguistic Features: Assessment of Audio Deepfake Discernment among Undergraduate Students
This paper evaluates the impact of training undergraduate students to improve their audio deepfake discernment ability by listening for expert-defined linguistic features. Such features have been shown to improve performance of AI algorithms; here, we ascertain whether this improvement in AI algorit...
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Zusammenfassung: | This paper evaluates the impact of training undergraduate students to improve
their audio deepfake discernment ability by listening for expert-defined
linguistic features. Such features have been shown to improve performance of AI
algorithms; here, we ascertain whether this improvement in AI algorithms also
translates to improvement of the perceptual awareness and discernment ability
of listeners. With humans as the weakest link in any cybersecurity solution, we
propose that listener discernment is a key factor for improving trustworthiness
of audio content. In this study we determine whether training that familiarizes
listeners with English language variation can improve their abilities to
discern audio deepfakes. We focus on undergraduate students, as this
demographic group is constantly exposed to social media and the potential for
deception and misinformation online. To the best of our knowledge, our work is
the first study to uniquely address English audio deepfake discernment through
such techniques. Our research goes beyond informational training by introducing
targeted linguistic cues to listeners as a deepfake discernment mechanism, via
a training module. In a pre-/post- experimental design, we evaluated the impact
of the training across 264 students as a representative cross section of all
students at the University of Maryland, Baltimore County, and across
experimental and control sections. Findings show that the experimental group
showed a statistically significant decrease in their unsurety when evaluating
audio clips and an improvement in their ability to correctly identify clips
they were initially unsure about. While results are promising, future research
will explore more robust and comprehensive trainings for greater impact. |
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DOI: | 10.48550/arxiv.2411.14586 |