Marcos Treviso, Ji-Ung Lee, et al.
Transactions of the Association for Computational Linguistics
We propose a novel feature selection method based on a variable memory Markov (VMM) model. The VMM was originally proposed as a generative model trying to preserve the original source statistics from training data. We extend this technique to simultaneously handle several sources, and further apply a new criterion to prune out nondiscriminative features out of the model. This results in a multiclass discriminative VMM (DVMM), which is highly efficient, scaling linearly with data size. Moreover, we suggest a natural scheme to sort the remaining features based on their discriminative power with respect to the sources at hand. We demonstrate the utility of our method for text and protein classification tasks.
Marcos Treviso, Ji-Ung Lee, et al.
Transactions of the Association for Computational Linguistics
Ehud Aharoni, Shai Fine, et al.
IBM J. Res. Dev
Leshem Choshen, Elad Venezian, et al.
EMNLP 2023
Shai Fine, Laurent Fournier, et al.
International Journal on Software Tools for Technology Transfer