Abstract
pyWitness is a python toolkit for recognition memory experiments, with a focus on eyewitness identification (ID) data analysis and model fitting. The current practice is for researchers to use different statistical packages to analyze a single dataset. pyWitness streamlines the process. In addition to conducting key data analyses (e.g., receiver operating characteristic analysis, confidence accuracy characteristic analysis), statistical comparisons, signal-detection-based model fits, simulated data generation, and power analyses are also possible. We describe the package implementation and provide detailed instructions and tutorials with datasets so that users can follow. There is also an online manual that is regularly updated. We developed pyWitness to be user-friendly, reduce human interaction with pre-processing and processing of data and model fits, and produce publication-ready plots. All pyWitness features align with open science practices, such that the algorithms, fits, and methods are reproducible and documented. While pyWitness is a python toolkit, it can also be used from R for users more accustomed to this environment.
Original language | English |
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Journal | Behavior Research Methods |
Early online date | 19 Jul 2023 |
DOIs | |
Publication status | E-pub ahead of print - 19 Jul 2023 |
Bibliographical note
Publisher Copyright:© 2023, The Author(s).
Research Groups and Themes
- Brain and Behaviour
- Cognitive Science
- Memory
Keywords
- eyewitness memory