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Papers/DetIE: Multilingual Open Information Extraction Inspired b...

DetIE: Multilingual Open Information Extraction Inspired by Object Detection

Michael Vasilkovsky, Anton Alekseev, Valentin Malykh, Ilya Shenbin, Elena Tutubalina, Dmitriy Salikhov, Mikhail Stepnov, Andrey Chertok, Sergey Nikolenko

2022-06-24Multilingual NLPOpen Information Extractionobject-detection
PaperPDFCode(official)

Abstract

State of the art neural methods for open information extraction (OpenIE) usually extract triplets (or tuples) iteratively in an autoregressive or predicate-based manner in order not to produce duplicates. In this work, we propose a different approach to the problem that can be equally or more successful. Namely, we present a novel single-pass method for OpenIE inspired by object detection algorithms from computer vision. We use an order-agnostic loss based on bipartite matching that forces unique predictions and a Transformer-based encoder-only architecture for sequence labeling. The proposed approach is faster and shows superior or similar performance in comparison with state of the art models on standard benchmarks in terms of both quality metrics and inference time. Our model sets the new state of the art performance of 67.7% F1 on CaRB evaluated as OIE2016 while being 3.35x faster at inference than previous state of the art. We also evaluate the multilingual version of our model in the zero-shot setting for two languages and introduce a strategy for generating synthetic multilingual data to fine-tune the model for each specific language. In this setting, we show performance improvement 15% on multilingual Re-OIE2016, reaching 75% F1 for both Portuguese and Spanish languages. Code and models are available at https://github.com/sberbank-ai/DetIE.

Results

TaskDatasetMetricValueModel
Open Information ExtractionLSOIEF171.4DetIELSOIE
Open Information ExtractionLSOIEF159.7CIGL-OIE
Open Information ExtractionLSOIEF158.7DetIELSOIE + IGL-CA
Open Information ExtractionLSOIEF155.7DetIEIMoJIE
Open Information ExtractionLSOIEF154.6OpenIE4
Open Information ExtractionLSOIEF151.6OpenIE6 (CIGL-OIE + IGL-CA)
Open Information ExtractionLSOIEF149.5OpenIE5
Open Information ExtractionLSOIEF145.9DetIEIMoJIE (ours) + IGL-CA
Open Information ExtractionLSOIEF136.8OllIE Mausam et al. (2012)

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