Learning to Extract Events from

2017-04-11  本文已影响0人  wencolani

Alexander Konovalov Ohio State University konovalov.2@osu.edu

WWW2017

Motivation

knowledge base should not be viewed as a static snapshot, but instead a rapidly evolving set of facts that must changes as the world changes.

this paper demonstrate the feasibility of accurately identifying entity-transition-events, from real-time news and social media text streams, that drive changes to a knowledge base.

they use Wikipedia's edit history as distant supervision to learn event extractors, and evaluate the extractors based on their ability to predict online updates.

the weakly supervised event extraction models are capable of automatically recommending revisions to knowledge graph in realtime.

Challenge:

the reliance of weakly supervision learning methods in redundancy in news articlse : many sentences in the web are likely to mention context independent relationships. But there are a large number of redundant messages describing each significant in social networking websites such as Twitter ---could collect a lot of training data for weakly supervised event extraction.

Method

to predict knowledge-base edits si to learn extractors for events that alter properties of knowledge-base entities, by leveraging the revision history of Wikipedia's semi-structured data as weak supervision.

this work selected a set of 6 infobox attributes whose changes correspond to certain well-defined events happening in the world: CurrentTeam, LeaderName, StateRepresentative, Spouse, Predecessor, DeathPlace.

Datasets:

Twitter(filter, NER, POS)
Annotated Gigaword v.5 dataset: newswire

Step:

tweets that are written near the time of a knowledge graph revision are likely to mention an event that cause the change in state.

Evaluation

how well the method can predict actual edits to Wikipedia, in addition to a human evaluation of predicted edits using Amazon'd Mechanical Turk.

Results

Appendix

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