Sound symbolism in Japanese names: Machine learning approaches to gender classification
Chun Hau Ngai,
Alexander J. Kilpatrick,
Aleksandra Ćwiek
Abstract:This study investigates the sound symbolic expressions of gender in Japanese names with machine learning algorithms. The main goal of this study is to explore how gender is expressed in the phonemes that make up Japanese names and whether systematic sound-meaning mappings, observed in Indo-European languages, extend to Japanese. In addition to this, this study compares the performance of machine learning algorithms. Random Forest and XGBoost algorithms are trained using the sounds of names and the typical gend… Show more
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