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Papers/BenchIE: A Framework for Multi-Faceted Fact-Based Open Inf...

BenchIE: A Framework for Multi-Faceted Fact-Based Open Information Extraction Evaluation

Kiril Gashteovski, Mingying Yu, Bhushan Kotnis, Carolin Lawrence, Mathias Niepert, Goran Glavaš

2021-09-14ACL 2022 5Open Information Extraction
PaperPDFCode(official)

Abstract

Intrinsic evaluations of OIE systems are carried out either manually -- with human evaluators judging the correctness of extractions -- or automatically, on standardized benchmarks. The latter, while much more cost-effective, is less reliable, primarily because of the incompleteness of the existing OIE benchmarks: the ground truth extractions do not include all acceptable variants of the same fact, leading to unreliable assessment of the models' performance. Moreover, the existing OIE benchmarks are available for English only. In this work, we introduce BenchIE: a benchmark and evaluation framework for comprehensive evaluation of OIE systems for English, Chinese, and German. In contrast to existing OIE benchmarks, BenchIE is fact-based, i.e., it takes into account informational equivalence of extractions: our gold standard consists of fact synsets, clusters in which we exhaustively list all acceptable surface forms of the same fact. Moreover, having in mind common downstream applications for OIE, we make BenchIE multi-faceted; i.e., we create benchmark variants that focus on different facets of OIE evaluation, e.g., compactness or minimality of extractions. We benchmark several state-of-the-art OIE systems using BenchIE and demonstrate that these systems are significantly less effective than indicated by existing OIE benchmarks. We make BenchIE (data and evaluation code) publicly available on https://github.com/gkiril/benchie.

Results

TaskDatasetMetricValueModel
Open Information ExtractionBenchIEF10.34ClausIE
Open Information ExtractionBenchIEPrecision0.5ClausIE
Open Information ExtractionBenchIERecall0.26ClausIE
Open Information ExtractionBenchIEPrecision0.43MinIE
Open Information ExtractionBenchIERecall0.28MinIE
Open Information ExtractionBenchIEF10.23M2OIE (EN)
Open Information ExtractionBenchIEPrecision0.39M2OIE (EN)
Open Information ExtractionBenchIEF10.13ROIE-T
Open Information ExtractionBenchIEPrecision0.37ROIE-T
Open Information ExtractionBenchIERecall0.08ROIE-T
Open Information ExtractionBenchIEF10.25OpenIE6
Open Information ExtractionBenchIEPrecision0.31OpenIE6
Open Information ExtractionBenchIERecall0.21OpenIE6
Open Information ExtractionBenchIEF10.17M2OIE (ZH)
Open Information ExtractionBenchIEPrecision0.26M2OIE (ZH)
Open Information ExtractionBenchIERecall0.13M2OIE (ZH)
Open Information ExtractionBenchIEF10.13ROIE-N
Open Information ExtractionBenchIEPrecision0.2ROIE-N
Open Information ExtractionBenchIERecall0.09ROIE-N
Open Information ExtractionBenchIEF10.13Stanford OIE
Open Information ExtractionBenchIEPrecision0.11Stanford OIE
Open Information ExtractionBenchIERecall0.16Stanford OIE
Open Information ExtractionBenchIEF10.04M2OIE (DE)
Open Information ExtractionBenchIEPrecision0.09M2OIE (DE)
Open Information ExtractionBenchIERecall0.03M2OIE (DE)
Open Information ExtractionBenchIEF10.03Naive OIE
Open Information ExtractionBenchIEPrecision0.03Naive OIE
Open Information ExtractionBenchIERecall0.02Naive OIE

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