Ecosistema global investigativo de la escucha y percepción musical: estructuras, redes y evolución científica
DOI:
https://doi.org/10.61154/rue.v13i2.4488Palabras clave:
Análisis temático, cienciometría, escucha, música, percepciónResumen
La percepción y la escucha musical constituyen un campo investigativo propio de la ciencia musical contemporánea que se especializa en la forma en que la música se procesa, siente y experimenta. El objetivo de la investigación es producir una representación cartográfica del ecosistema investigativo de los estudios de la escucha y percepción de la música a partir de indicadores bibliométricos. A través de un análisis establecido en indicadores bibliométricos se produce el mapeo representativo y un despliegue iconológico de las relaciones posibles de este campo, según la información de dos bases científicas reputadas Scopus y Web of Science. Los resultados evidencian la convergencia de una serie de campos consolidados como los implantes cocleares, la memoria, el procesamiento auditivo, las emociones, la corteza auditiva, el cerebro musical y técnicas como electroencefalografías o resonancias magnéticas funcionales (fMRI), y la identificación de campos emergentes como la cognición y la afectividad desde la neurociencia y la neuropsicología contemporánea. Se esperan nuevos desarrollos creativos en este campo científico, si se consideran los progresos tecnológicos y las grandes bases de datos de la comunicación científica como una oportunidad de crecimiento.Descargas
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