ESIC Digital Economy and Innovation Journal

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Maximización de los beneficios del aprendizaje automático

mejora de la teoría de efectos de redes de datos para mejorar la creación de valor y la apropiación

Resumen

La teoría recientemente propuesta de los efectos de la red de datos tiene como objetivo explicar cómo se crea el valor del usuario a partir del uso de la tecnología de aprendizaje automático. La teoría explica la capacidad de aprendizaje única del aprendizaje automático, que utiliza grandes conjuntos de datos para hacer predicciones y mejorar la toma de decisiones. Este artículo ofrece una evaluación de la teoría de los efectos de la red de datos, identificando algunas de sus fortalezas y limitaciones. En cuanto a las fortalezas, contribuye al éxito de las empresas, explica las características únicas de las tecnologías de ML y es un avance del cuerpo de la teoría de los efectos de red. Sus limitaciones luego se transforman en un conjunto de preguntas de investigación interrelacionadas que se centran en la relación del uso del aprendizaje automático y cuestiones tales como: captura de valor, una visión co-evolutiva, una perspectiva de múltiples actores y la dinámica de bases de datos. Este artículo describe un enfoque multiteórico para estudiar la creación de valor y la captura que permite el uso de tecnologías de aprendizaje automático.

Citas

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