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Concept Representation by Learning Explicit and Implicit Concept Couplings

机译:通过学习显式和隐式概念联轴器的概念表示

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Generating the precise semantic representation of a word or concept is a fundamental task in natural language processing. Recent studies which incorporate semantic knowledge into word embedding have shown their potential in improving the semantic representation of a concept. However, existing approaches only achieved limited performance improvement as they usually 1) model a word's semantics from some explicit aspects while ignoring the intrinsic aspects of the word, 2) treat semantic knowledge as a supplement of word embeddings, and 3) consider partial relations between concepts while ignoring rich coupling relations between them, such as explicit concept co-occurrences in descriptive texts in a corpus as well as concept hyperlink relations in a knowledge network, and implicit couplings between concept co-occurrences and hyperlinks. In human consciousness, a concept is always associated with various couplings that exist within/between descriptive texts and knowledge networks, which inspires us to capture as many concept couplings as possible for building a more informative concept representation. We thus propose a neural coupled concept representation (CoupledCR) framework and its instantiation: a coupled concept embedding (CCE) model. CCE first learns two types of explicit couplings that are based on concept co-occurrences and hyperlink relations, respectively, and then learns a type of high-level implicit couplings between these two types of explicit couplings for better concept representation. Extensive experimental results on six real-world datasets show that CCE significantly outperforms eight state-of-the-art word embeddings and semantic representation methods.
机译:生成单词或概念的精确语义表示是自然语言处理中的基本任务。最近将语义知识融入嵌入词嵌入的研究表明它们在改善概念的语义表示方面存在潜力。然而,现有方法仅达到了有限的性能改善,因为它们通常是一个单词从一些明确方面模拟一个单词的语义,同时忽略了单词的内在方面,2)将语义知识视为单词嵌入的补充,3)考虑到部分关系概念同时忽略它们之间的丰富耦合关系,例如语料库中的描述性文本中的显式概念共同,以及知识网络中的概念超链接关系,以及概念共同发生和超链接之间的隐式耦合。在人类意识中,一个概念始终与描述性文本和知识网络之间存在的各种耦合相关联,这激发了我们捕获尽可能多的概念耦合,以构建更具信息丰富的概念表示。因此,我们提出了神经耦合概念表示(耦合频率)框架及其实例化:嵌入(CCE)模型的耦合概念。 CCE首先学习基于概念共发生和超链接关系的两种类型的显式耦合,然后在这两种类型的显式耦合之间学习一类高级隐式耦合,以获得更好的概念表示。六个现实世界数据集的广泛实验结果表明CCE显着优于八个最先进的单词嵌入和语义表示方法。

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