Martin Lorenzo
2023
An Evaluation Framework for Mapping News Headlines to Event Classes in a Knowledge Graph
Steve Fonin Mbouadeu
|
Martin Lorenzo
|
Ken Barker
|
Oktie Hassanzadeh
Proceedings of the 6th Workshop on Challenges and Applications of Automated Extraction of Socio-political Events from Text
Mapping ongoing news headlines to event-related classes in a rich knowledge base can be an important component in a knowledge-based event analysis and forecasting solution. In this paper, we present a methodology for creating a benchmark dataset of news headlines mapped to event classes in Wikidata, and resources for the evaluation of methods that perform the mapping. We use the dataset to study two classes of unsupervised methods for this task: 1) adaptations of classic entity linking methods, and 2) methods that treat the problem as a zero-shot text classification problem. For the first approach, we evaluate off-the-shelf entity linking systems. For the second approach, we explore a) pre-trained natural language inference (NLI) models, and b) pre-trained large generative language models. We present the results of our evaluation, lessons learned, and directions for future work. The dataset and scripts for evaluation are made publicly available.
Search