Engelmann, Björn; Schaer, Philipp:
IRCologne at TREC 2021 News Track : Relation-Based Re-ranking for Background Linking
In: The Thirtieth Text REtrieval Conference (TREC 2021) Proceedings / Soboroff, Ian; Ellis, Angela (Hrsg.). - Text Retrieval Conference (TREC) 2021; online; 15.11.-19.11.2021 - Gaithersburg: National Institute of Standards and Technology (NIST), 2021, S. 1 - 6
2021Aufsatz (Konferenz) in TagungsbandOpen Access
Fakultät für Informations- und Kommunikationswissenschaften » Institut für InformationswissenschaftFakultät für Informations- und Kommunikationswissenschaften » Institut für Informationsmanagement - Forschungsinstitut
Titel:
IRCologne at TREC 2021 News Track : Relation-Based Re-ranking for Background Linking
Autor*in:
Engelmann, BjörnTH Köln
DHSB-ID
THK0003937
SCOPUS
57188726477
SCOPUS
58140337300
Sonstiges
der TH Köln zugeordnete Person
;
Schaer, PhilippTH Köln
DHSB-ID
THK0002510
ORCID
0000-0002-8817-4632ORCID iD
SCOPUS
35758004800
Sonstiges
der TH Köln zugeordnete Person
Erscheinungsjahr:
2021
OA-Publikationsweg:
Open Access
Sprache des Textes:
Englisch
Ressourcentyp:
Text
Access Rights:
Open Access
Peer Reviewed:
Peer Reviewed
Praxispartner*in:
Nein
Kategorie:
Forschung
Teil der Statistik:
Teil der Statistik

Abstract in Englisch:

This paper presents our approach to the background linking task of the TREC 2021 News Track. The background linking task is to find a set of relevant articles in the Washington Post dataset containing helpful background information for a given news article. Our approach involved a two-stage retrieval process. In the first stage, the 200 most relevant documents were extracted from the entire corpus using BM25. The second stage involved re-ranking using similarity scores based on entities and relations extracted from the query document and the associated 200 relevant documents. For this task, we submitted five runs, each giving different weights to the entities and relations. Our best run received a nDCG@5 of 0.4423, and we were thus able to show that re-ranking with the use of relations leads to a slight improvement over the baseline without re-ranking.