@inproceedings{damaschk-etal-2019-multiclass,
title = "Multiclass Text Classification on Unbalanced, Sparse and Noisy Data",
author = {D{\"o}nicke, Tillmann and
Damaschk, Matthias and
Lux, Florian},
editor = {Nivre, Joakim and
Derczynski, Leon and
Ginter, Filip and
Lindi, Bj{\o}rn and
Oepen, Stephan and
S{\o}gaard, Anders and
Tidemann, J{\"o}rg},
booktitle = "Proceedings of the First NLPL Workshop on Deep Learning for Natural Language Processing",
month = sep,
year = "2019",
address = "Turku, Finland",
publisher = {Link{\"o}ping University Electronic Press},
url = "https://preview.aclanthology.org/jlcl-multiple-ingestion/W19-6207/",
pages = "58--65",
abstract = "This paper discusses methods to improve the performance of text classification on data that is difficult to classify due to a large number of unbalanced classes with noisy examples. A variety of features are tested, in combination with three different neural-network-based methods with increasing complexity. The classifiers are applied to a songtext{--}artist dataset which is large, unbalanced and noisy. We come to the conclusion that substantial improvement can be obtained by removing unbalancedness and sparsity from the data. This fulfils a classification task unsatisfactorily{---}however, with contemporary methods, it is a practical step towards fairly satisfactory results."
}
Markdown (Informal)
[Multiclass Text Classification on Unbalanced, Sparse and Noisy Data](https://preview.aclanthology.org/jlcl-multiple-ingestion/W19-6207/) (Dönicke et al., NoDaLiDa 2019)
ACL