基于鲁棒泛化的机器阅读理解系统集成中基本模型权值的零射击估计

Razieh Baradaran, Hossein Amirkhani
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引用次数: 1

摘要

机器阅读理解(MRC)模型的主要挑战之一是其脆弱的域外泛化,这使得这些模型不能很好地适用于现实世界的通用问答问题。在本文中,我们利用零射击加权集成方法来提高MRC模型的域外泛化的鲁棒性。在该方法中,权值估计模块用于估计域外权值,集成模块根据权值对多个基本模型的预测结果进行聚合。实验表明,该方法不仅提高了最终精度,而且对区域变化具有较强的鲁棒性。
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Zero-Shot Estimation of Base Models’ Weights in Ensemble of Machine Reading Comprehension Systems for Robust Generalization
One of the main challenges of the machine reading comprehension (MRC) models is their fragile out-of-domain generalization, which makes these models not properly applicable to real-world general-purpose question answering problems. In this paper, we leverage a zero-shot weighted ensemble method for improving the robustness of out-of-domain generalization in MRC models. In the proposed method, a weight estimation module is used to estimate out-of-domain weights, and an ensemble module aggregate several base models’ predictions based on their weights. The experiments indicate that the proposed method not only improves the final accuracy, but also is robust against domain changes.
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