Incorporating Domain Knowledge in Learning Word Embedding

Arpita Roy, Youngja Park, Shimei Pan
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引用次数: 3

Abstract

Word embedding is a Natural Language Processing (NLP) technique that automatically maps words from a vocabulary to vectors of real numbers in an embedding space. It has been widely used in recent years to boost the performance of a variety of NLP tasks such as named entity recognition, syntactic parsing and sentiment analysis. Classic word embedding methods such as Word2Vec and GloVe work well when they are given a large text corpus. When the input texts are sparse as in many specialized domains (e.g., cybersecurity), these methods often fail to produce high-quality vectors. In this paper, we describe a novel method, called Annotation Word Embedding (AWE), to train domain-specific word embeddings from sparse texts. Our method is generic and can leverage diverse types of domain knowledge such as domain vocabulary, semantic relations and attribute specifications. Specifically, our method encodes diverse types of domain knowledge as text annotations and incorporates the annotations in word embedding. We have evaluated AWE in two cybersecurity applications: identifying malware aliases and identifying relevant Common Vulnerabilities and Exposures (CVEs). Our evaluation results have demonstrated the effectiveness of our method over state-of-the-art baselines.
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结合领域知识学习词嵌入
词嵌入是一种自然语言处理(NLP)技术,它将词汇表中的词自动映射到嵌入空间中的实数向量。近年来,它被广泛用于提高各种NLP任务的性能,如命名实体识别、句法分析和情感分析。经典的词嵌入方法,如Word2Vec和GloVe,在给定大型文本语料库时效果良好。当输入文本是稀疏的,如在许多专门的领域(例如,网络安全),这些方法往往不能产生高质量的向量。在本文中,我们描述了一种新的方法,称为标注词嵌入(AWE),从稀疏文本中训练特定领域的词嵌入。我们的方法是通用的,可以利用不同类型的领域知识,如领域词汇表、语义关系和属性规范。具体地说,我们的方法将不同类型的领域知识编码为文本注释,并将这些注释合并到词嵌入中。我们在两个网络安全应用中评估了AWE:识别恶意软件别名和识别相关的常见漏洞和暴露(cve)。我们的评估结果证明了我们的方法在最先进的基线上的有效性。
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