Transformer-based Subject Entity Detection in Wikipedia Listings

10/04/2022
by   Nicolas Heist, et al.
0

In tasks like question answering or text summarisation, it is essential to have background knowledge about the relevant entities. The information about entities - in particular, about long-tail or emerging entities - in publicly available knowledge graphs like DBpedia or CaLiGraph is far from complete. In this paper, we present an approach that exploits the semi-structured nature of listings (like enumerations and tables) to identify the main entities of the listing items (i.e., of entries and rows). These entities, which we call subject entities, can be used to increase the coverage of knowledge graphs. Our approach uses a transformer network to identify subject entities at the token-level and surpasses an existing approach in terms of performance while being bound by fewer limitations. Due to a flexible input format, it is applicable to any kind of listing and is, unlike prior work, not dependent on entity boundaries as input. We demonstrate our approach by applying it to the complete Wikipedia corpus and extracting 40 million mentions of subject entities with an estimated precision of 71 incorporated in the most recent version of CaLiGraph.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/10/2021

Information Extraction From Co-Occurring Similar Entities

Knowledge about entities and their interrelations is a crucial factor of...
research
03/17/2021

Capturing Knowledge of Emerging Entities From Extended Search Snippets

Google and other search engines feature the entity search by representin...
research
03/11/2020

Entity Extraction from Wikipedia List Pages

When it comes to factual knowledge about a wide range of domains, Wikipe...
research
10/12/2021

Mention Memory: incorporating textual knowledge into Transformers through entity mention attention

Natural language understanding tasks such as open-domain question answer...
research
09/13/2021

End-to-End Entity Resolution and Question Answering Using Differentiable Knowledge Graphs

Recently, end-to-end (E2E) trained models for question answering over kn...
research
02/03/2017

Insights into Entity Name Evolution on Wikipedia

Working with Web archives raises a number of issues caused by their temp...
research
07/01/2011

Law of Connectivity in Machine Learning

We present in this paper our law that there is always a connection prese...

Please sign up or login with your details

Forgot password? Click here to reset