Distinguishing butchery cut marks from crocodile bite marks through machine learning methods

Sci Rep. 2018 Apr 10;8(1):5786. doi: 10.1038/s41598-018-24071-1.

Abstract

All models of evolution of human behaviour depend on the correct identification and interpretation of bone surface modifications (BSM) on archaeofaunal assemblages. Crucial evolutionary features, such as the origin of stone tool use, meat-eating, food-sharing, cooperation and sociality can only be addressed through confident identification and interpretation of BSM, and more specifically, cut marks. Recently, it has been argued that linear marks with the same properties as cut marks can be created by crocodiles, thereby questioning whether secure cut mark identifications can be made in the Early Pleistocene fossil record. Powerful classification methods based on multivariate statistics and machine learning (ML) algorithms have previously successfully discriminated cut marks from most other potentially confounding BSM. However, crocodile-made marks were marginal to or played no role in these comparative analyses. Here, for the first time, we apply state-of-the-art ML methods on crocodile linear BSM and experimental butchery cut marks, showing that the combination of multivariate taphonomy and ML methods provides accurate identification of BSM, including cut and crocodile bite marks. This enables empirically-supported hominin behavioural modelling, provided that these methods are applied to fossil assemblages.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Alligators and Crocodiles*
  • Animals
  • Archaeology / methods*
  • Bites and Stings*
  • Bone and Bones
  • Computational Biology / methods
  • Fossils*
  • Hominidae / psychology*
  • Machine Learning*
  • Tool Use Behavior*