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Deep Learning and Linguistic Representation

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Informationen zum Autor Shalom Lappin is Professor of Natural Language Processing at Queen Mary University of London, Professor of Computational Linguistics at the University of Gothenburg and Emeritus Professor of Computational Linguistics at King’s College London. Klappentext The application of deep learning methods to problems in natural language processing has generated significant progress across a wide range of natural language processing tasks. For some of these applications, deep learning models now approach or surpass human performance. While the success of this approach has transformed the engineering methods of machine learning in artificial intelligence, the significance of these achievements for the modelling of human learning and representation remains unclear.Deep Learning and Linguistic Representation looks at the application of a variety of deep learning systems to several cognitively interesting NLP tasks. It also considers the extent to which this work illuminates our understanding of the way in which humans acquire and represent linguistic knowledge.Key Features:combines an introduction to deep learning in AI and NLP with current research on Deep Neural Networks in computational linguistics.is self-contained and suitable for teaching in computer science, AI, and cognitive science courses; it does not assume extensive technical training in these areas.provides a compact guide to work on state of the art systems that are producing a revolution across a range of difficult natural language tasks. Zusammenfassung Deep Learning and Linguistic Representation looks at the application of a variety of deep learning systems to several cognitively interesting NLP tasks. It also considers the extent to which this work illuminates our understanding of the way in which humans acquire and represent linguistic knowledge. Inhaltsverzeichnis Chapter 1 Introduction: Deep Learning in Natural Language Processing 1.1 OUTLINE OF THE BOOK 1.2 FROM ENGINEERING TO COGNITIVE SCIENCE 1.3 ELEMENTS OF DEEP LEARNING 1.4 TYPES OF DEEP NEURAL NETWORKS 1.5 AN EXAMPLE APPLICATION 1.6 SUMMARY AND CONCLUSIONS Chapter 2 Learning Syntactic Structure with Deep Neural Networks 2.1 SUBJECT-VERB AGREEMENT 2.2 ARCHITECTURE AND EXPERIMENTS 2.3 HIERARCHICAL STRUCTURE 2.4 TREE DNNS 2.5 SUMMARY AND CONCLUSIONS Chapter 3 Machine Learning and The Sentence Acceptability Task 3.1 GRADIENCE IN SENTENCE ACCEPTABILITY 3.2 PREDICTING ACCEPTABILITY WITH MACHINE LEARNING MODELS 3.3 ADDING TAGS AND TREES 3.4 SUMMARY AND CONCLUSIONS Chapter 4 Predicting Human Acceptability Judgments in Context 4.1 ACCEPTABILITY JUDGMENTS IN CONTEXT 4.2 TWO SETS OF EXPERIMENTS 4.3 THE COMPRESSION EFFECT AND DISCOURSE COHERENCE 4.4 PREDICTING ACCEPTABILITY WITH DIFFERENT DNN MODELS 4.5 SUMMARY AND CONCLUSIONS Chapter 5 Cognitively Viable Computational Models of Linguistic Knowledge 5.1 HOW USEFUL ARE LINGUISTIC THEORIES FOR NLP APPLICATIONS? 5.2 MACHINE LEARNING MODELS VS FORMAL GRAMMAR 5.3 EXPLAINING LANGUAGE ACQUISITION 5.4 DEEP LEARNING AND DISTRIBUTIONAL SEMANTICS 1 5.5 SUMMARY AND CONCLUSIONS Chapter 6 Conclusions and Future Work 6.1 REPRESENTING SYNTACTIC AND SEMANTIC KNOWLEDGE 6.2 DOMAIN SPECIFIC LEARNING BIASES AND LANGUAGE ACQUISITION 6.3 DIRECTIONS FOR FUTURE WORK REFERENCES Author Index Subject Index ...

Product details

Authors Shalom Lappin, Shalom (Queen Mary University of London Lappin, Lappin Shalom
Publisher Taylor & Francis Ltd.
 
Content Book
Product form Hardback
Publication date 30.04.2021
Subject Humanities, art, music > Linguistics and literary studies > General and comparative linguistics
Natural sciences, medicine, IT, technology > IT, data processing > Programming languages
 
EAN 9780367649470
ISBN 978-0-367-64947-0
Pages 168
 
Series Chapman & Hall/CRC Machine Learning & Pattern Recognition
Subjects Philosophy of Language, Artificial Intelligence, Linguistics, COMPUTERS / Computer Science, PHILOSOPHY / Language, LANGUAGE ARTS & DISCIPLINES / Linguistics / General, computer science, Artificial Intelligence (AI), Computational Linguistics, COMPUTERS / Artificial Intelligence / General, COMPUTERS / Data Science / Neural Networks, Computational and corpus linguistics, Neural networks and fuzzy systems, Neural networks & fuzzy systems, machine translation, Semantic Representation, Unsupervised machine learning, neural network models, language acquisition theory, Test set, subject verb agreement, Integrated Data Structure, cognitive modelling, syntax processing, deep neural networks in linguistics, Max Pooling Layer, Dl Method, DNN Learning, Context Vector, Annotated Training Data, Scoring Accuracy Rates, Tensor Operations, Document Context, Random Context, Pearson Coefficient Correlation, Syntactic Tags, Non-parametric Wilcoxon Signed Rank Test, Hierarchical Syntactic Structure, Acceptability Judgements, Preceding Target Words, Training Set Increases
 

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