@article{42bc231a592447269ccc8982dfc08714,
title = "Ten simple rules for the computational modeling of behavioral data",
abstract = "Computational modeling of behavior has revolutionized psychology and neuroscience. By fitting models to experimental data we can probe the algorithms underlying behavior, find neural correlates of computational variables and better understand the effects of drugs, illness and interventions. But with great power comes great responsibility. Here, we offer ten simple rules to ensure that computational modeling is used with care and yields meaningful insights. In particular, we present a beginner-friendly, pragmatic and details-oriented introduction on how to relate models to data. What, exactly, can a model tell us about the mind? To answer this, we apply our rules to the simplest modeling techniques most accessible to beginning modelers and illustrate them with examples and code available online. However, most rules apply to more advanced techniques. Our hope is that by following our guidelines, researchers will avoid many pitfalls and unleash the power of computational modeling on their own data.",
author = "Wilson, {Robert C.} and Collins, {Anne G.E.}",
note = "Funding Information: We are grateful to all our lab members who provided feedback on this paper, in particular Beth Bari-bault, Waitsang Keung, Sarah Master, Sam McDougle, and William Ryan. We are grateful for useful reviewers? and editors? feedback, including that from Tim Behrens, Mehdi Khamassi, Ken Norman, Valentin Wyart, and other anonymous reviewers. We also gratefully acknowledge the contribution of many others in our previous labs and collaborations, with whom we learned many of the techniques, tips and tricks presented here. This work was supported by NIA Grant R56 AG061888 to RCW and NSF Grant 1640885 and NIH Grant R01 MH118279 to AGEC. Funding Information: We are grateful to all our lab members who provided feedback on this paper, in particular Beth Bari-bault, Waitsang Keung, Sarah Master, Sam McDougle, and William Ryan. We are grateful for useful reviewers{\textquoteright} and editors{\textquoteright} feedback, including that from Tim Behrens, Mehdi Khamassi, Ken Norman, Valentin Wyart, and other anonymous reviewers. We also gratefully acknowledge the contribution of many others in our previous labs and collaborations, with whom we learned many of the techniques, tips and tricks presented here. This work was supported by NIA Grant R56 AG061888 to RCW and NSF Grant 1640885 and NIH Grant R01 MH118279 to AGEC. Publisher Copyright: {\textcopyright} 2019, eLife Sciences Publications Ltd. All rights reserved.",
year = "2019",
month = nov,
doi = "10.7554/eLife.49547",
language = "English (US)",
volume = "8",
journal = "eLife",
issn = "2050-084X",
publisher = "eLife Sciences Publications",
}