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Papers/Robust Retrieval Augmented Generation for Zero-shot Slot F...

Robust Retrieval Augmented Generation for Zero-shot Slot Filling

Michael Glass, Gaetano Rossiello, Md Faisal Mahbub Chowdhury, Alfio Gliozzo

2021-08-31EMNLP 2021 11Knowledge GraphsFew-Shot LearningZero-shot Slot Fillingslot-fillingSlot FillingPassage RetrievalRetrievalDomain Adaptation
PaperPDFCode(official)Code

Abstract

Automatically inducing high quality knowledge graphs from a given collection of documents still remains a challenging problem in AI. One way to make headway for this problem is through advancements in a related task known as slot filling. In this task, given an entity query in form of [Entity, Slot, ?], a system is asked to fill the slot by generating or extracting the missing value exploiting evidence extracted from relevant passage(s) in the given document collection. The recent works in the field try to solve this task in an end-to-end fashion using retrieval-based language models. In this paper, we present a novel approach to zero-shot slot filling that extends dense passage retrieval with hard negatives and robust training procedures for retrieval augmented generation models. Our model reports large improvements on both T-REx and zsRE slot filling datasets, improving both passage retrieval and slot value generation, and ranking at the top-1 position in the KILT leaderboard. Moreover, we demonstrate the robustness of our system showing its domain adaptation capability on a new variant of the TACRED dataset for slot filling, through a combination of zero/few-shot learning. We release the source code and pre-trained models.

Results

TaskDatasetMetricValueModel
Slot FillingT-RExR-Prec74.34DPRDNS+RAG
Slot FillingT-RExR@582.89DPRDNS+RAG
Slot FillingT-RExR-Prec65.02DPRBM25+RAG
Slot FillingT-RExR@575.52DPRBM25+RAG
Slot FillingT-RExR-Prec53.04DPRNQ+RAG
Slot FillingT-RExR@565.54DPRNQ+RAG
Slot FillingT-RExR-Prec49.02DPRBM25
Slot FillingT-RExR@563.34DPRBM25
Slot FillingT-RExR-Prec42.62DPRDNS
Slot FillingT-RExR@555.09DPRDNS
Slot FillingT-RExR-Prec19.5DPRNQ
Slot FillingT-RExR@529.8DPRNQ
Slot FillingzsRER-Prec98.6DPRDNS+RAG
Slot FillingzsRER@599.7DPRDNS+RAG
Slot FillingzsRER-Prec97.53DPRDNS
Slot FillingzsRER@599.3DPRDNS
Slot FillingzsRER-Prec96.89DPRBM25+RAG
Slot FillingzsRER@598.01DPRBM25+RAG
Slot FillingzsRER-Prec94.55DPRBM25
Slot FillingzsRER@598.17DPRBM25
Slot FillingzsRER-Prec68.13DPRNQ+RAG
Slot FillingzsRER@579.19DPRNQ+RAG
Slot FillingzsRER-Prec45.49DPRNQ
Slot FillingzsRER@560.77DPRNQ

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