University of Tasmania
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Adding an inception network to neural network open information extraction

This paper presents a method to resolve tuples from plain text by adding an inception network, and dependency path embedding to existing neural network methods of Open Information Extraction (Open IE). Inception networks are used in analysis of computer vision, and dependency path embedding in text processing, but neither has been reported with Open IE. Performance was measured on benchmark datasets using two existing Open IE deep learning methods, one using bidirectional long short-term memory and BIO tagging (RnnOIE-verb), and another using a span-based model (SpanOIE). RnnOIE-verb was compared with RnnOIE-verb plus inception network and/or dependency path embedding. SpanOIE was compared with SpanOIE plus inception network. Performance slightly increased with the addition of inception network to RnnOIE-verb (before AUC 0.45, F1 0.59; after AUC 0.46, F1 0.60) and inception network to SpanOIE (before AUC 0.63, F1 0.748; after AUC 0.64, F1 0.764). The performance gain was minor but potentially relevant to an iterative process of improvement.

History

Publication title

IEEE Intelligent Systems

Volume

37

Issue

3

Pagination

85-97

ISSN

1541-1672

Department/School

Australian Institute of Health Service Management (AIHSM), Information and Communication Technology, Medicine

Publisher

Institute of Electrical and Electronics Engineers

Publication status

  • Accepted

Place of publication

United States

Rights statement

Copyright © 2022, IEEE

Socio-economic Objectives

220403 Artificial intelligence