Fr. 122.40

Animal Classification in Central China - From the late Neolithic to the early Bronze Age

English · Paperback / Softback

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Description

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This monograph uses an archaeological approach to decipher folk classification of animals in ancient societies. Ningning Dong collates faunal data from three late Neolithic and early Bronze Age sites in central China and integrates multiple lines of evidence. The analyses demonstrate a folk taxonomy remarkably different from the Linnaean system. The results show that age might have served as a critical categorical filter, particularly in ritual contexts, and that the wild/domesticated dichotomy was established no earlier than the Shang dynasty. This perceptual distinction is unlikely to have been synchronised with the initial occurrence of domestication in the early Neolithic. Animal categories constituted a vital part of a broader classificatory scheme that concerned the organisation of the cosmos as a whole. This book enriches our understanding of animal categories in ancient China and further discusses the tension between etics and emics, language and action, domestic and wild.

Product details

Authors Ningning Dong
Publisher British Archaeological Reports Oxford Ltd
 
Languages English
Product format Paperback / Softback
Released 04.08.2021
 
EAN 9781407357928
ISBN 978-1-4073-5792-8
No. of pages 146
Dimensions 210 mm x 297 mm x 10 mm
Weight 581 g
Series International
Subjects Humanities, art, music > History > Pre and early history
Natural sciences, medicine, IT, technology > Biology > Zoology
Social sciences, law, business > Social sciences (general)

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