Embeddings in Natural Language Processing: Theory and Advances in Vector Representations of Meaning

IF 3.7 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Computational Linguistics Pub Date : 2021-06-30 DOI:10.1162/coli_r_00410
Marcos Garcia
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引用次数: 37

Abstract

Word vector representations have a long tradition in several research fields, such as cognitive science or computational linguistics. They have been used to represent the meaning of various units of natural languages, including, among others, words, phrases, and sentences. Before the deep learning tsunami, count-based vector space models had been successfully used in computational linguistics to represent the semantics of natural languages. However, the rise of neural networks in NLP popularized the use of word embeddings, which are now applied as pre-trained vectors in most machine learning architectures. This book, written by Mohammad Taher Pilehvar and Jose Camacho-Collados, provides a comprehensive and easy-to-read review of the theory and advances in vector models for NLP, focusing specially on semantic representations and their applications. It is a great introduction to different types of embeddings and the background and motivations behind them. In this sense, the authors adequately present the most relevant concepts and approaches that have been used to build vector representations. They also keep track of the most recent advances of this vibrant and fast-evolving area of research, discussing cross-lingual representations and current language models based on the Transformer. Therefore, this is a useful book for researchers interested in computational methods for semantic representations and artificial intelligence. Although some basic knowledge of machine learning may be necessary to follow a few topics, the book includes clear illustrations and explanations, which make it accessible to a wide range of readers. Apart from the preface and the conclusions, the book is organized into eight chapters. In the first two, the authors introduce some of the core ideas of NLP and artificial neural networks, respectively, discussing several concepts that will be useful throughout the book. Then, Chapters 3 to 6 present different types of vector representations at the lexical level (word embeddings, graph embeddings, sense embeddings, and contextualized embeddings), followed by a brief chapter (7) about sentence and document embeddings. For each specific topic, the book includes methods and data sets to assess the quality of the embeddings. Finally, Chapter 8 raises ethical issues involved
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自然语言处理中的嵌入:意义的矢量表示理论与进展
词向量表示在认知科学或计算语言学等多个研究领域有着悠久的传统。它们被用来表示自然语言的各种单位的含义,包括单词、短语和句子。在深度学习海啸之前,基于计数的向量空间模型已经成功地用于计算语言学,以表示自然语言的语义。然而,神经网络在NLP中的兴起普及了单词嵌入的使用,单词嵌入现在被用作大多数机器学习架构中的预训练向量。这本书由Mohammad Taher Pilehvar和Jose Camacho Collados撰写,对NLP向量模型的理论和进展进行了全面而易读的综述,特别关注语义表示及其应用。它很好地介绍了不同类型的嵌入及其背后的背景和动机。从这个意义上讲,作者充分介绍了用于构建向量表示的最相关的概念和方法。他们还跟踪了这一充满活力和快速发展的研究领域的最新进展,讨论了基于Transformer的跨语言表示和当前语言模型。因此,对于对语义表示和人工智能的计算方法感兴趣的研究人员来说,这是一本有用的书。尽管一些机器学习的基本知识可能是跟随一些主题所必需的,但这本书包括清晰的插图和解释,这使它能够为广泛的读者所理解。除前言和结论外,本书共分为八章。在前两部分中,作者分别介绍了NLP和人工神经网络的一些核心思想,并讨论了在整本书中有用的几个概念。然后,第3章至第6章在词汇层面呈现了不同类型的向量表示(单词嵌入、图形嵌入、意义嵌入和上下文嵌入),然后是关于句子和文档嵌入的简短章节(7)。对于每个特定的主题,本书包括评估嵌入质量的方法和数据集。最后,第8章提出了相关的伦理问题
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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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