Bingfeng Luo, Yansong Feng, et al.
ACL 2017
This paper addresses a novel task of se-mantically analyzing the comparative con-structions inherent in attributive superla-tive expressions against structured knowl-edge bases (KBs). The task can be de-fined in two-fold: first, selecting the com-parison dimension against a KB, on which the involved items are compared; and sec-ond, determining the ranking order, in which the items are ranked (ascending or descending). We exploit Wikipedia and Freebase to collect training data in an un-supervised manner, where a neural net-work model is then learnt to select, from Freebase predicates, the most appropriate comparison dimension for a given superla-tive expression, and further determine its ranking order heuristically. Experimen-tal results show that it is possible to learn from coarsely obtained training data to semantically characterize the comparative constructions involved in attributive su-perlative expressions.
Bingfeng Luo, Yansong Feng, et al.
ACL 2017
Kun Xu, Liwei Wang, et al.
ACL 2019
En Liang Xu, Shiwan Zhao, et al.
ICHI 2019
Cicero dos Santos, Bing Xiang, et al.
ACL-IJCNLP 2015