Relabel the Noise: Joint Extraction of Entities and Relations via
Cooperative Multiagents
- URL: http://arxiv.org/abs/2004.09930v1
- Date: Tue, 21 Apr 2020 12:03:04 GMT
- Title: Relabel the Noise: Joint Extraction of Entities and Relations via
Cooperative Multiagents
- Authors: Daoyuan Chen, Yaliang Li, Kai Lei, Ying Shen
- Abstract summary: We propose a joint extraction approach to handle noisy instances with a group of cooperative multiagents.
To handle noisy instances in a fine-grained manner, each agent in the cooperative group evaluates the instance by calculating a continuous confidence score from its own perspective.
A confidence consensus module is designed to gather the wisdom of all agents and re-distribute the noisy training set with confidence-scored labels.
- Score: 52.55119217982361
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Distant supervision based methods for entity and relation extraction have
received increasing popularity due to the fact that these methods require light
human annotation efforts. In this paper, we consider the problem of
\textit{shifted label distribution}, which is caused by the inconsistency
between the noisy-labeled training set subject to external knowledge graph and
the human-annotated test set, and exacerbated by the pipelined
entity-then-relation extraction manner with noise propagation. We propose a
joint extraction approach to address this problem by re-labeling noisy
instances with a group of cooperative multiagents. To handle noisy instances in
a fine-grained manner, each agent in the cooperative group evaluates the
instance by calculating a continuous confidence score from its own perspective;
To leverage the correlations between these two extraction tasks, a confidence
consensus module is designed to gather the wisdom of all agents and
re-distribute the noisy training set with confidence-scored labels. Further,
the confidences are used to adjust the training losses of extractors.
Experimental results on two real-world datasets verify the benefits of
re-labeling noisy instance, and show that the proposed model significantly
outperforms the state-of-the-art entity and relation extraction methods.
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