Multi-label learning concerns learning multiple, overlapping, and correlated classes. In this paper, we adapt a recent structured prediction framework called "HC-Search for multi-label prediction problems. One of the main advantages of this framework is that its training is sensitive to the loss function, unlike the other multilabel approaches that either assume a specific loss function or require a manual adaptation to each loss function. We empirically evaluate our instantiation of the HC-Search framework along with many existing multilabel learning algorithms on a variety of benchmarks by employing diverse task loss functions. Our results demonstrate that the performance of existing algorithms tends to be very similar in most cases, and that the HC-Search approach is comparable and often better than all the other algorithms across different loss functions.
CITATION STYLE
Doppa, J. R., Yu, J., Ma, C., Fern, A., & Tadepalli, P. (2014). HC-Search for multi-label prediction: An empirical study. In Proceedings of the National Conference on Artificial Intelligence (Vol. 3, pp. 1795–1801). AI Access Foundation. https://doi.org/10.1609/aaai.v28i1.9021
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