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What artificial intelligence might teach us about the origin of human language

Computer Science

What artificial intelligence might teach us about the origin of human language

A. Kilpatrick

Delve into an intriguing study by Alexander Kilpatrick that uncovers how AI research leverages sound symbolism. Discover how machine learning algorithms may reflect our instinctual caution by overpredicting perceived threats while analyzing Pokémon names across languages. This fascinating work examines the intersection of technology and human psychology.

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~3 min • Beginner • English
Abstract
This study explores an interesting pattern emerging from research that combines artificial intelligence with sound symbolism. In these studies, supervised machine learning algorithms are trained to classify samples based on the sounds of referent names. Machine learning algorithms are efficient learners of sound symbolism, but they tend to bias one category over the other. The pattern is this: when a category arguably represents greater threat, the algorithms tend to overpredict to that category. A hypothesis, framed by error management theory, is presented that proposes that this may be evidence of an adaptation to preference cautious behaviour. This hypothesis is tested by constructing extreme gradient boosted (XGBoost) models using the sounds that make up the names of Chinese, Japanese and Korean Pokémon and observing classification error distribution.
Publisher
Not specified; study has not undergone peer review.
Published On
Jan 01, 2023
Authors
Alexander Kilpatrick
Tags
artificial intelligence
sound symbolism
machine learning
XGBoost
error management theory
cautious behavior
Pokémon names
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