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Multi-Source (Pre-)Training for Cross-Domain Measurement, Unit and Context Extraction

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arxiv 2308.02951 v1 pith:G5A76AQD submitted 2023-08-05 cs.CL

Multi-Source (Pre-)Training for Cross-Domain Measurement, Unit and Context Extraction

classification cs.CL
keywords cross-domainextractionmulti-sourceresultstrainingapplybestcontext
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a cross-domain approach for automated measurement and context extraction based on pre-trained language models. We construct a multi-source, multi-domain corpus and train an end-to-end extraction pipeline. We then apply multi-source task-adaptive pre-training and fine-tuning to benchmark the cross-domain generalization capability of our model. Further, we conceptualize and apply a task-specific error analysis and derive insights for future work. Our results suggest that multi-source training leads to the best overall results, while single-source training yields the best results for the respective individual domain. While our setup is successful at extracting quantity values and units, more research is needed to improve the extraction of contextual entities. We make the cross-domain corpus used in this work available online.

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