Abstract
Studies of human memory often generate data on the sequence and timing of recalled items, but scoring such data using conventional methods is difficult or impossible. We describe a Python-based semiautomated system that greatly simplifies this task. This software, called PyParse, can easily be used in conjunction with many common experiment authoring systems. Scored data is output in a simple ASCII format and can be accessed with the programming language of choice, allowing for the identification of features such as correct responses, prior-list intrusions, extra-list intrusions, and repetitions. © 2010 The Psychonomic Society, Inc.
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CITATION STYLE
Solway, A., Geller, A. S., Sederberg, P. B., & Kahana, M. J. (2010). Pyparse: A semiautomated system for scoring spoken recall data. Behavior Research Methods, 42(1), 141–147. https://doi.org/10.3758/BRM.42.1.141
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