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Signalling Nouns in English: A Corpus-Based Discourse Approach (Studies in English Language)

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Professor John Flowerdew, Dr Richard W. Forest
Cambridge University Press, 5/18/2017
EAN 9781108403894, ISBN10: 1108403891

Paperback, 304 pages, 22.9 x 15.2 x 1.5 cm
Language: English

Signalling nouns (SNs) are abstract nouns like 'fact', 'idea', 'problem' and 'result', which are non-specific in their meaning when considered in isolation and specific in their meaning by reference to their linguistic context. SNs contribute to cohesion and evaluation in discourse. This work offers the first book-length study of the SN phenomenon to treat the functional and discourse features of the category as primary. Using a balanced corpus of authentic data, the book explores the lexicogrammatical and discourse features of SNs in academic journal articles, textbooks, and lectures across a range of disciplines in the natural and social sciences. The book will be essential reading for researchers and advanced students of semantics, syntax, corpus linguistics and discourse analysis, in addition to scholars and teachers in the field of English for academic purposes.

1. Introduction
2. Grammatical features of signalling nouns
3. Semantic features
4. Discourse features
5. Criteria for determining what constitutes a signalling noun in this study
6. Corpus, methodology, annotation system, and reporting of the data
7. Set of examples
8. Overview of signalling noun distributions in the corpus
9. Overview of semantic categories
10. Overview of lexicogrammatical and discourse pattern frequencies
11. Conclusion
References
Appendix A. The overall structure of the corpus
Appendix B. List of texts that make up the corpus
Appendix C. Lemmatised SNs in descending order according to normalised frequency
Appendix D. Non-lemmatised SNs in descending order according to normalised frequency
Appendix E. Lemmatised SNs in alphabetical order
Appendix F. Non-lemmatised SNs in alphabetical order
Appendix G. Frequency of SNs in different semantic categories.