Mo Yu, Wenpeng Yin, et al.
ACL 2017
Modern NLP models rely heavily on engineered features, which often combine word and contextual information into complex lexical features. Such combination results in large numbers of features, which can lead to overfitting. We present a new model that represents complex lexical features - comprised of parts for words, contextual information and labels - in a tensor that captures conjunction information among these parts. We apply low-rank tensor approximations to the corresponding parameter tensors to reduce the parameter space and improve prediction speed. Furthermore, we investigate two methods for handling features that include n-grams of mixed lengths. Our model achieves state-of-the-art results on tasks in relation extraction, PP-attachment, and preposition disambiguation.
Mo Yu, Wenpeng Yin, et al.
ACL 2017
Guanhua Zhang, Bing Bai, et al.
ACL 2019
Xiaoxiao Guo, Shiyu Chang, et al.
AAAI 2019
Rie Kubota Ando, Mark Dredze, et al.
TREC 2005