Recognizing Musical Entities is important for Music Information Retrieval (MIR) since it can improve the performance of several tasks such as music recommendation, genre classification or artist similarity. However, most entity recognition systems in the music domain have concentrated on formal texts (e.g. artists’ biographies, encyclopedic articles, etc.), ignoring rich and noisy user-generated content. In this work, we present a novel method to recognize musical entities in Twitter content generated by users following a classical music radio channel. Our approach takes advantage of both formal radio schedule and users’ tweets to improve entity recognition. We instantiate several machine learning algorithms to perform entity recognition combining task-specific and corpus-based features. We also show how to improve recognition results by jointly considering formal and user-generated content.
Recognizing Musical Entities in User-generated Content / Porcaro, L.; Saggion, H.. - In: COMPUTACIÓN Y SISTEMAS. - ISSN 1405-5546. - 23:3(2019), pp. 1079-1088. (Intervento presentato al convegno International Conference on Computational Linguistics and Intelligent Text Processing (CICLing) tenutosi a La Rochelle; France) [10.13053/CyS-23-3-3280].
Recognizing Musical Entities in User-generated Content
Porcaro L.
Primo
;
2019
Abstract
Recognizing Musical Entities is important for Music Information Retrieval (MIR) since it can improve the performance of several tasks such as music recommendation, genre classification or artist similarity. However, most entity recognition systems in the music domain have concentrated on formal texts (e.g. artists’ biographies, encyclopedic articles, etc.), ignoring rich and noisy user-generated content. In this work, we present a novel method to recognize musical entities in Twitter content generated by users following a classical music radio channel. Our approach takes advantage of both formal radio schedule and users’ tweets to improve entity recognition. We instantiate several machine learning algorithms to perform entity recognition combining task-specific and corpus-based features. We also show how to improve recognition results by jointly considering formal and user-generated content.File | Dimensione | Formato | |
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Note: https://www.cys.cic.ipn.mx/ojs/index.php/CyS/article/view/3280/2700
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