Cristina Barros
2017
Inflection Generation for Spanish Verbs using Supervised Learning
Cristina Barros | Dimitra Gkatzia | Elena Lloret
Proceedings of the First Workshop on Subword and Character Level Models in NLP
Cristina Barros | Dimitra Gkatzia | Elena Lloret
Proceedings of the First Workshop on Subword and Character Level Models in NLP
We present a novel supervised approach to inflection generation for verbs in Spanish. Our system takes as input the verb’s lemma form and the desired features such as person, number, tense, and is able to predict the appropriate grammatical conjugation. Even though our approach learns from fewer examples comparing to previous work, it is able to deal with all the Spanish moods (indicative, subjunctive and imperative) in contrast to previous work which only focuses on indicative and subjunctive moods. We show that in an intrinsic evaluation, our system achieves 99% accuracy, outperforming (although not significantly) two competitive state-of-art systems. The successful results obtained clearly indicate that our approach could be integrated into wider approaches related to text generation in Spanish.
Improving the Naturalness and Expressivity of Language Generation for Spanish
Cristina Barros | Dimitra Gkatzia | Elena Lloret
Proceedings of the 10th International Conference on Natural Language Generation
Cristina Barros | Dimitra Gkatzia | Elena Lloret
Proceedings of the 10th International Conference on Natural Language Generation
We present a flexible Natural Language Generation approach for Spanish, focused on the surface realisation stage, which integrates an inflection module in order to improve the naturalness and expressivity of the generated language. This inflection module inflects the verbs using an ensemble of trainable algorithms whereas the other types of words (e.g. nouns, determiners, etc) are inflected using hand-crafted rules. We show that our approach achieves 2% higher accuracy than two state-of-art inflection generation approaches. Furthermore, our proposed approach also predicts an extra feature: the inflection of the imperative mood, which was not taken into account by previous work. We also present a user evaluation, where we demonstrate that the proposed method significantly improves the perceived naturalness of the generated language.
2016
Generating sets of related sentences from input seed features
Cristina Barros | Elena Lloret
Proceedings of the 2nd International Workshop on Natural Language Generation and the Semantic Web (WebNLG 2016)
Cristina Barros | Elena Lloret
Proceedings of the 2nd International Workshop on Natural Language Generation and the Semantic Web (WebNLG 2016)