ACL2021

Beyond Laurel/Yanny: An Autoencoder-Enabled Search for Polyperceivable Audio

Kartik Chandra, Chuma Kabaghe, Gregory Valiant

Abstract

The famous "laurel/yanny" phenomenon references an audio clip that elicits dramatically different responses from different listeners. For the original clip, roughly half the population hears the word "laurel," while the other half hears "yanny." How common are such "polyperceivable" audio clips? In this paper we apply ML techniques to study the prevalence of polyperceivability in spoken language. We devise a metric that correlates with polyperceivability of audio clips, use it to efficiently find new "laurel/yanny"-type examples, and validate these results with human experiments. Our results suggest that polyperceivable examples are surprisingly prevalent, existing for >2% of English words. 1