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Ethno-geochemical and Phytolith Studies of Activity Related Patterns: A Case Study from Al Ma’tan, Jordan

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  • Emma Louise Jenkins
  • Samantha Lee Allcock
  • Sarah Elliott
  • Carol Palmer
  • John Grattan

Abstract

Understanding Neolithic sites in southwest Asia is often difficult because of the lack of preservation of organic remains and the effects of various taphonomic processes that alter the original record. Here, we use an ethnographic approach to test the potential of using plant phytoliths and geochemistry to aid our interpretation of southwest Asian Neolithic sites. Our study of a recently abandoned stone and mud constructed village in Jordan, shows that for certain activity types, phytoliths and geochemistry can help distinguish different construction methods and functions, particularly for burnt areas, animal use areas and where there has been the addition of a specific construction material. For features constructed from the same source materials distinctions are more problematic. Geochemical and phytolith proxies were individually effective in distinguishing activity areas and construction materials, but signals were diminished when the statistical analysis was run on both forms of evidence combined. It is therefore recommended that the data from plant phytolith and geochemical analyses are subject to separate statistical tests and that the two sets of results are used in combination to interpret archaeological sites and their uses.

Suggested Citation

  • Emma Louise Jenkins & Samantha Lee Allcock & Sarah Elliott & Carol Palmer & John Grattan, 2017. "Ethno-geochemical and Phytolith Studies of Activity Related Patterns: A Case Study from Al Ma’tan, Jordan," Environmental Archaeology, Taylor & Francis Journals, vol. 22(4), pages 412-433, October.
  • Handle: RePEc:taf:yenvxx:v:22:y:2017:i:4:p:412-433
    DOI: 10.1080/14614103.2017.1362787
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    Cited by:

    1. Daniella Vos & Richard Stafford & Emma L Jenkins & Andrew Garrard, 2021. "A model based on Bayesian confirmation and machine learning algorithms to aid archaeological interpretation by integrating incompatible data," PLOS ONE, Public Library of Science, vol. 16(3), pages 1-25, March.

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