Adapting Neural Link Predictors for Data-Efficient Complex Query Answering

Open Access
Authors
  • Erik Arakelyan
  • Pasquale Minervini
  • Daniel Daza
  • Michael Cochez
  • Isabelle Augenstein
Publication date 2023
Host editors
  • A. Oh
  • T. Naumann
  • A. Globerson
  • K. Saenko
  • M. Hardt
  • S. Levine
Book title 37th Conference on Neural Information Processing Systems (NeurIPS 2023)
Book subtitle 10-16 December 2023, New Orleans, Louisana, USA
ISBN (electronic)
  • 9781713899921
Series Advances in Neural Information Processing Systems
Event 37th Conference on Neural Information Processing Systems (NeurIPS 2023)
Number of pages 13
Publisher Neural Information Processing Systems Foundation
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Answering complex queries on incomplete knowledge graphs is a challenging task where a model needs to answer complex logical queries in the presence of missing knowledge. Prior work in the literature has proposed to address this problem by designing architectures trained end-to-end for the complex query answering task with a reasoning process that is hard to interpret while requiring data and resource-intensive training. Other lines of research have proposed re-using simple neural link predictors to answer complex queries, reducing the amount of training data by orders of magnitude while providing interpretable answers. The neural link predictor used in such approaches is not explicitly optimised for the complex query answering task, implying that its scores are not calibrated to interact together. We propose to address these problems via CQDA, a parameter-efficient score \emph{adaptation} model optimised to re-calibrate neural link prediction scores for the complex query answering task. While the neural link predictor is frozen, the adaptation component -- which only increases the number of model parameters by 0.03% -- is trained on the downstream complex query answering task. Furthermore, the calibration component enables us to support reasoning over queries that include atomic negations, which was previously impossible with link predictors. In our experiments, CQDA produces significantly more accurate results than current state-of-the-art methods, improving from 34.4 to 35.1 Mean Reciprocal Rank values averaged across all datasets and query types while using ≤30% of the available training query types. We further show that CQDA is data-efficient, achieving competitive results with only 1% of the complex training queries and robust in out-of-domain evaluations. Source code and datasets are available at https://github.com/EdinburghNLP/adaptive-cqd.
Document type Conference contribution
Language English
Published at https://papers.nips.cc/paper_files/paper/2023/hash/55c518a17bd17dcb69aa14d69d085994-Abstract-Conference.html https://openreview.net/forum?id=1G7CBp8o7L
Other links https://github.com/EdinburghNLP/adaptive-cqd https://doi.org/10.52202/075280
Downloads
Permalink to this page
Back