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Part V - Physiological Measures

Published online by Cambridge University Press:  12 December 2024

John E. Edlund
Affiliation:
Rochester Institute of Technology, New York
Austin Lee Nichols
Affiliation:
Central European University, Vienna
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Publisher: Cambridge University Press
Print publication year: 2024

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  • Physiological Measures
  • Edited by John E. Edlund, Rochester Institute of Technology, New York, Austin Lee Nichols, Central European University, Vienna
  • Book: The Cambridge Handbook of Research Methods and Statistics for the Social and Behavioral Sciences
  • Online publication: 12 December 2024
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  • Physiological Measures
  • Edited by John E. Edlund, Rochester Institute of Technology, New York, Austin Lee Nichols, Central European University, Vienna
  • Book: The Cambridge Handbook of Research Methods and Statistics for the Social and Behavioral Sciences
  • Online publication: 12 December 2024
Available formats
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  • Physiological Measures
  • Edited by John E. Edlund, Rochester Institute of Technology, New York, Austin Lee Nichols, Central European University, Vienna
  • Book: The Cambridge Handbook of Research Methods and Statistics for the Social and Behavioral Sciences
  • Online publication: 12 December 2024
Available formats
×