Unsupervised morphology learning
The eventual goal of this project is the unsupervised learning of morphology.
Hungarian exhibits rich agglutinative morphology with vowel harmony and a large number of noun cases.
Our current experiments include supervised morphological segmentation using recurrent and convolutional neural networks and morphological reinflection using sequence-to-sequence models.