Bayesian Aggregation for Hierarchical Genre Classification
International Symposium on Music Information Retrieval 2007, September 2007
Abstract
Hierarchical taxonomies of classes arise in the analysis of many types of
musical information, including genre, as a means of organizing overlapping
categories at varying levels of generality. However, incorporating hierarchical
structure into conventional machine learning systems presents a challenge: the
use of independent binary classifiers for each class in the hierarchy can
produce hierarchically inconsistent predictions. That is, an example may be
assigned to a class, and not assigned to the parent of that class. This paper
applies a Bayesian framework to combine, or aggregate, a hierarchy of multiple binary classifiers
in a principled manner, and
consequently improves performance over the hierarchy as a whole. Furthermore, such
an approach allows for an arbitrarily complex hierarchy, and does not suffer from classes that
are too broad or too refined. Experiments on the MIREX 2005 symbolic genre
classification dataset show that our Bayesian Aggregation algorithm provides significant
improvement over independent classifiers, and demonstrates superior performance
compared to previous work. Our method also improves similarity search by ranking
songs by similarity of hierarchical predictions to those of a query song.
Files
Citation
Christopher DeCoro, Zafer Barutcuoglu, and Rebecca Fiebrink.
"Bayesian Aggregation for Hierarchical Genre Classification."
International Symposium on Music Information Retrieval 2007, September 2007.
BibTeX
@inproceedings{DeCoro:2007:BAF, author = "Christopher DeCoro and Zafer Barutcuoglu and Rebecca Fiebrink", title = "{Bayes}ian Aggregation for Hierarchical Genre Classification", booktitle = "International Symposium on Music Information Retrieval 2007", year = "2007", month = sep }