Variational Deep Logic Network for Joint Inference of Entities and Relations

IF 3.7 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Wenya Wang, Sinno Jialin Pan
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引用次数: 5

Abstract

Abstract Currently, deep learning models have been widely adopted and achieved promising results on various application domains. Despite their intriguing performance, most deep learning models function as black boxes, lacking explicit reasoning capabilities and explanations, which are usually essential for complex problems. Take joint inference in information extraction as an example. This task requires the identification of multiple structured knowledge from texts, which is inter-correlated, including entities, events, and the relationships between them. Various deep neural networks have been proposed to jointly perform entity extraction and relation prediction, which only propagate information implicitly via representation learning. However, they fail to encode the intensive correlations between entity types and relations to enforce their coexistence. On the other hand, some approaches adopt rules to explicitly constrain certain relational facts, although the separation of rules with representation learning usually restrains the approaches with error propagation. Moreover, the predefined rules are inflexible and might result in negative effects when data is noisy. To address these limitations, we propose a variational deep logic network that incorporates both representation learning and relational reasoning via the variational EM algorithm. The model consists of a deep neural network to learn high-level features with implicit interactions via the self-attention mechanism and a relational logic network to explicitly exploit target interactions. These two components are trained interactively to bring the best of both worlds. We conduct extensive experiments ranging from fine-grained sentiment terms extraction, end-to-end relation prediction, to end-to-end event extraction to demonstrate the effectiveness of our proposed method.
实体与关系联合推理的变分深度逻辑网络
摘要目前,深度学习模型已被广泛采用,并在各个应用领域取得了可喜的成果。尽管它们的性能很有趣,但大多数深度学习模型都是黑匣子,缺乏明确的推理能力和解释,而这些能力和解释通常对复杂问题至关重要。以信息提取中的联合推理为例。这项任务需要从文本中识别多个相互关联的结构化知识,包括实体、事件及其之间的关系。已经提出了各种深度神经网络来联合执行实体提取和关系预测,它们仅通过表示学习隐式地传播信息。然而,它们未能对实体类型和关系之间的密集相关性进行编码,以加强它们的共存。另一方面,一些方法采用规则来明确约束某些关系事实,尽管规则与表示学习的分离通常会抑制错误传播的方法。此外,预定义的规则是不灵活的,当数据有噪声时可能会产生负面影响。为了解决这些限制,我们提出了一种变分深度逻辑网络,该网络通过变分EM算法结合了表示学习和关系推理。该模型由一个深度神经网络和一个关系逻辑网络组成,前者通过自注意机制学习具有隐含交互的高级特征,后者明确利用目标交互。这两个组件是交互式训练的,以实现两全其美。我们进行了从细粒度情感项提取、端到端关系预测到端到端事件提取的广泛实验,以证明我们提出的方法的有效性。
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来源期刊
Computational Linguistics
Computational Linguistics 工程技术-计算机:跨学科应用
CiteScore
15.80
自引率
0.00%
发文量
45
审稿时长
>12 weeks
期刊介绍: Computational Linguistics, the longest-running publication dedicated solely to the computational and mathematical aspects of language and the design of natural language processing systems, provides university and industry linguists, computational linguists, AI and machine learning researchers, cognitive scientists, speech specialists, and philosophers with the latest insights into the computational aspects of language research.
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