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Processing Chinese Relative Clauses: Evidence for the Subject-Relative Advantage

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  • Shravan Vasishth
  • Zhong Chen
  • Qiang Li
  • Gueilan Guo

Abstract

A general fact about language is that subject relative clauses are easier to process than object relative clauses. Recently, several self-paced reading studies have presented surprising evidence that object relatives in Chinese are easier to process than subject relatives. We carried out three self-paced reading experiments that attempted to replicate these results. Two of our three studies found a subject-relative preference, and the third study found an object-relative advantage. Using a random effects bayesian meta-analysis of fifteen studies (including our own), we show that the overall current evidence for the subject-relative advantage is quite strong (approximate posterior probability of a subject-relative advantage given the data: 78–80%). We argue that retrieval/integration based accounts would have difficulty explaining all three experimental results. These findings are important because they narrow the theoretical space by limiting the role of an important class of explanation—retrieval/integration cost—at least for relative clause processing in Chinese.

Suggested Citation

  • Shravan Vasishth & Zhong Chen & Qiang Li & Gueilan Guo, 2013. "Processing Chinese Relative Clauses: Evidence for the Subject-Relative Advantage," PLOS ONE, Public Library of Science, vol. 8(10), pages 1-15, October.
  • Handle: RePEc:plo:pone00:0077006
    DOI: 10.1371/journal.pone.0077006
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    Cited by:

    1. Shravan Vasishth & Bruno Nicenboim & Nicolas Chopin & Robin Ryder, 2017. "Bayesian Hierarchical Finite Mixture Models of Reading Times: A Case Study," Working Papers 2017-33, Center for Research in Economics and Statistics.

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