Evaluating Prompt-based Question Answering for Object Prediction in the Open Research Knowledge Graph

May 22, 2023 ยท Declared Dead ยท ๐Ÿ› International Conference on Database and Expert Systems Applications

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Authors Jennifer D'Souza, Moussab Hrou, Sรถren Auer arXiv ID 2305.12900 Category cs.CL: Computation & Language Cross-listed cs.AI, cs.DL, cs.IT Citations 2 Venue International Conference on Database and Expert Systems Applications Last Checked 4 months ago
Abstract
There have been many recent investigations into prompt-based training of transformer language models for new text genres in low-resource settings. The prompt-based training approach has been found to be effective in generalizing pre-trained or fine-tuned models for transfer to resource-scarce settings. This work, for the first time, reports results on adopting prompt-based training of transformers for \textit{scholarly knowledge graph object prediction}. The work is unique in the following two main aspects. 1) It deviates from the other works proposing entity and relation extraction pipelines for predicting objects of a scholarly knowledge graph. 2) While other works have tested the method on text genera relatively close to the general knowledge domain, we test the method for a significantly different domain, i.e. scholarly knowledge, in turn testing the linguistic, probabilistic, and factual generalizability of these large-scale transformer models. We find that (i) per expectations, transformer models when tested out-of-the-box underperform on a new domain of data, (ii) prompt-based training of the models achieve performance boosts of up to 40\% in a relaxed evaluation setting, and (iii) testing the models on a starkly different domain even with a clever training objective in a low resource setting makes evident the domain knowledge capture gap offering an empirically-verified incentive for investing more attention and resources to the scholarly domain in the context of transformer models.
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