Do Transformers Dream of Inference, or Can Pretrained Generative Models Learn Implicit Inferential Rules?

Zhengzhong Liang, M. Surdeanu
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引用次数: 1

Abstract

Large pretrained language models (LM) have been used successfully for multi-hop question answering. However, most of these directions are not interpretable, as they do not make the inference hops necessary to explain a candidate answer explicitly. In this work, we investigate the capability of a state-of-the-art transformer LM to generate explicit inference hops, i.e., to infer a new statement necessary to answer a question given some premise input statements. Our analysis shows that such LMs can generate new statements for some simple inference types, but performance remains poor for complex, real-world inference types such as those that require monotonicity, composition, and commonsense knowledge.
变形金刚梦想推理,还是预训练生成模型可以学习隐式推理规则?
大型预训练语言模型(LM)已成功用于多跳问答。然而,这些指示中的大多数是不可解释的,因为它们没有做出明确解释候选答案所需的推断跳。在这项工作中,我们研究了最先进的变压器LM生成显式推理跳的能力,即,在给定一些前提输入语句的情况下,推断出回答问题所需的新语句。我们的分析表明,这样的lm可以为一些简单的推理类型生成新的语句,但是对于复杂的、现实世界的推理类型,比如那些需要单调性、组合和常识的推理类型,性能仍然很差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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