Temporal information extraction plays an important role in providing a Q&A service or an interactive system that can grasp the user's intention and context of a conversation. It is particularly difficult to correctly recognize the temporal relations from Korean text owing to the inherent linguistic characteristics of the Korean language. In this paper, we propose a deep neural network designed to capture the temporal context from Korean natural language sentences based on long short-term memory (LSTM) for extracting the relationships among the time expressions and events. There are three types of temporal information extraction: TIMEX3, EVENT, and TLINK extraction; however, we only aim to extract TLINKs (i.e., temporal relations) between TIMEX3 and EVENT entities that have already been extracted from the given sentences. We also demonstrate the performance of our LSTM-based model when extracting temporal relationships from human-annotated datasets.
[1]
Chen Lin,et al.
Neural Temporal Relation Extraction
,
2017,
EACL.
[2]
James Pustejovsky,et al.
SemEval-2017 Task 12: Clinical TempEval
,
2017,
*SEMEVAL.
[3]
Ho-Jin Choi,et al.
Korean TimeML and Korean TimeBank
,
2016,
LREC.
[4]
Yusuke Miyao,et al.
Classifying Temporal Relations by Bidirectional LSTM over Dependency Paths
,
2017,
ACL.
[5]
Ruihong Huang,et al.
A Sequential Model for Classifying Temporal Relations between Intra-Sentence Events
,
2017,
EMNLP.
[6]
James Pustejovsky,et al.
TempEval-3: Evaluating Events, Time Expressions, and Temporal Relations
,
2012,
ArXiv.
[7]
Anna Rumshisky,et al.
Temporal Information Extraction for Question Answering Using Syntactic Dependencies in an LSTM-based Architecture
,
2017,
EMNLP.