论文标题
部分可观测时空混沌系统的无模型预测
VER: Unifying Verbalizing Entities and Relations
论文作者
论文摘要
实体和实体之间的关系在现实世界中至关重要。本质上,我们通过了解实体和关系来理解世界。例如,要了解一个领域,例如计算机科学,我们需要了解相关的概念,例如机器学习以及概念之间的关系,例如机器学习和人工智能。要了解一个人,我们应该首先知道他/她是谁以及他/她与他人的关系。要了解实体和关系,人类可以指自然语言描述。例如,在学习新科学术语时,人们通常会首先阅读其词典或百科全书中的定义。要知道两个实体之间的关系,人类倾向于创建一个句子来连接它们。在本文中,我们提出了VER:一种统一的言语实体和关系模型。具体而言,我们尝试构建一个将任何实体或实体集作为输入的系统,并生成一个句子来表示实体和关系。广泛的实验表明,我们的模型可以生成描述实体关系的高质量句子,并促进有关实体和关系的各种任务,包括定义建模,关系建模和生成常识性推理。
Entities and relationships between entities are vital in the real world. Essentially, we understand the world by understanding entities and relations. For instance, to understand a field, e.g., computer science, we need to understand the relevant concepts, e.g., machine learning, and the relationships between concepts, e.g., machine learning and artificial intelligence. To understand a person, we should first know who he/she is and how he/she is related to others. To understand entities and relations, humans may refer to natural language descriptions. For instance, when learning a new scientific term, people usually start by reading its definition in dictionaries or encyclopedias. To know the relationship between two entities, humans tend to create a sentence to connect them. In this paper, we propose VER: a unified model for Verbalizing Entities and Relations. Specifically, we attempt to build a system that takes any entity or entity set as input and generates a sentence to represent entities and relations. Extensive experiments demonstrate that our model can generate high-quality sentences describing entities and entity relationships and facilitate various tasks on entities and relations, including definition modeling, relation modeling, and generative commonsense reasoning.