RADIA -- Radio Advertisement Detection with Intelligent Analytics
- URL: http://arxiv.org/abs/2403.03538v1
- Date: Wed, 6 Mar 2024 08:34:28 GMT
- Title: RADIA -- Radio Advertisement Detection with Intelligent Analytics
- Authors: Jorge \'Alvarez, Juan Carlos Armenteros, Camilo Torr\'on, Miguel
Ortega-Mart\'in, Alfonso Ardoiz, \'Oscar Garc\'ia, Ignacio Arranz, \'I\~nigo
Galdeano, Ignacio Garrido, Adri\'an Alonso, Fernando Bay\'on, Oleg Vorontsov
- Abstract summary: This study investigates a novel automated radio advertisement detection technique incorporating advanced speech recognition and text classification algorithms.
RadIA's approach surpasses traditional methods by eliminating the need for prior knowledge of the broadcast content.
Experimental results show that the resulting model, trained on carefully segmented and tagged text data, achieves an F1-macro score of 87.76 against a theoretical maximum of 89.33.
- Score: 35.426591359304
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Radio advertising remains an integral part of modern marketing strategies,
with its appeal and potential for targeted reach undeniably effective. However,
the dynamic nature of radio airtime and the rising trend of multiple radio
spots necessitates an efficient system for monitoring advertisement broadcasts.
This study investigates a novel automated radio advertisement detection
technique incorporating advanced speech recognition and text classification
algorithms. RadIA's approach surpasses traditional methods by eliminating the
need for prior knowledge of the broadcast content. This contribution allows for
detecting impromptu and newly introduced advertisements, providing a
comprehensive solution for advertisement detection in radio broadcasting.
Experimental results show that the resulting model, trained on carefully
segmented and tagged text data, achieves an F1-macro score of 87.76 against a
theoretical maximum of 89.33. This paper provides insights into the choice of
hyperparameters and their impact on the model's performance. This study
demonstrates its potential to ensure compliance with advertising broadcast
contracts and offer competitive surveillance. This groundbreaking research
could fundamentally change how radio advertising is monitored and open new
doors for marketing optimization.
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