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Donald R. Williams

Bio: Donald R. Williams is an academic researcher from University of California, Davis. The author has contributed to research in topics: Bayesian probability & Graphical model. The author has an hindex of 14, co-authored 44 publications receiving 849 citations. Previous affiliations of Donald R. Williams include Emory University & University of California, Berkeley.

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Daniel Lakens1, Federico Adolfi2, Federico Adolfi3, Casper J. Albers4, Farid Anvari5, Matthew A. J. Apps6, Shlomo Argamon7, Thom Baguley8, Raymond Becker9, Stephen D. Benning10, Daniel E. Bradford11, Erin Michelle Buchanan12, Aaron R. Caldwell13, Ben Van Calster14, Ben Van Calster15, Rickard Carlsson16, Sau-Chin Chen17, Bryan Chung18, Lincoln J. Colling19, Gary S. Collins6, Zander Crook20, Emily S. Cross21, Emily S. Cross22, Sameera Daniels, Henrik Danielsson23, Lisa M. DeBruine21, Daniel J. Dunleavy24, Brian D. Earp25, Michele I. Feist26, Jason D. Ferrell27, Jason D. Ferrell28, James G. Field29, Nicholas W. Fox30, Amanda Friesen31, Caio Gomes, Monica Gonzalez-Marquez32, James A. Grange33, Andrew P. Grieve, Robert Guggenberger34, James T. Grist19, Anne-Laura van Harmelen19, Fred Hasselman35, Kevin D. Hochard36, Mark R. Hoffarth37, Nicholas P. Holmes38, Michael Ingre39, Peder M. Isager23, Hanna K. Isotalus40, Christer Johansson41, Konrad Juszczyk42, David A. Kenny43, Ahmed A. Khalil2, Ahmed A. Khalil44, Ahmed A. Khalil45, Barbara Konat42, Junpeng Lao46, Erik Gahner Larsen47, Gerine M.A. Lodder4, Jiří Lukavský48, Christopher R. Madan38, David Manheim49, Stephen R. Martin50, Andrea E. Martin20, Andrea E. Martin2, Deborah G. Mayo51, Randy J. McCarthy52, Kevin McConway53, Colin McFarland, Amanda Q. X. Nio54, Gustav Nilsonne55, Gustav Nilsonne56, Gustav Nilsonne57, Cilene Lino de Oliveira58, Jean-Jacques Orban de Xivry15, Sam Parsons6, Gerit Pfuhl59, Kimberly A. Quinn60, John J. Sakon37, S. Adil Saribay61, Iris K. Schneider62, Manojkumar Selvaraju63, Zsuzsika Sjoerds14, Samuel G. Smith64, Tim Smits15, Jeffrey R. Spies65, Jeffrey R. Spies66, Vishnu Sreekumar67, Crystal N. Steltenpohl68, Neil Stenhouse11, Wojciech Świątkowski, Miguel A. Vadillo69, Marcel A.L.M. van Assen70, Marcel A.L.M. van Assen71, Matt N. Williams72, Samantha E Williams73, Donald R. Williams74, Tal Yarkoni27, Ignazio Ziano75, Rolf A. Zwaan39 
Eindhoven University of Technology1, Max Planck Society2, National Scientific and Technical Research Council3, University of Groningen4, Flinders University5, University of Oxford6, Illinois Institute of Technology7, Nottingham Trent University8, Bielefeld University9, University of Nevada, Las Vegas10, University of Wisconsin-Madison11, Missouri State University12, University of Arkansas13, Leiden University14, Katholieke Universiteit Leuven15, Linnaeus University16, Tzu Chi University17, University of British Columbia18, University of Cambridge19, University of Edinburgh20, University of Glasgow21, Bangor University22, Linköping University23, Florida State University24, Yale University25, University of Louisiana at Lafayette26, University of Texas at Austin27, St. Edward's University28, West Virginia University29, Rutgers University30, Indiana University31, RWTH Aachen University32, Keele University33, University of Tübingen34, Radboud University Nijmegen35, University of Chester36, New York University37, University of Nottingham38, Erasmus University Rotterdam39, University of Bristol40, Sahlgrenska University Hospital41, Adam Mickiewicz University in Poznań42, University of Connecticut43, Humboldt University of Berlin44, Charité45, University of Fribourg46, University of Kent47, Academy of Sciences of the Czech Republic48, RAND Corporation49, Baylor University50, Virginia Tech51, Northern Illinois University52, Open University53, King's College London54, Stockholm University55, Stanford University56, Karolinska Institutet57, Universidade Federal de Santa Catarina58, University of Tromsø59, DePaul University60, Boğaziçi University61, University of Cologne62, King Abdulaziz City for Science and Technology63, University of Leeds64, Center for Open Science65, University of Virginia66, National Institutes of Health67, University of Southern Indiana68, Autonomous University of Madrid69, Tilburg University70, Utrecht University71, Massey University72, Saint Louis University73, University of California, Davis74, Ghent University75
TL;DR: In response to recommendations to redefine statistical significance to P ≤ 0.005, it is proposed that researchers should transparently report and justify all choices they make when designing a study, including the alpha level.
Abstract: In response to recommendations to redefine statistical significance to P ≤ 0.005, we propose that researchers should transparently report and justify all choices they make when designing a study, including the alpha level.

296 citations

Journal ArticleDOI
TL;DR: An applied introduction to Bayesian inference with Bayes factors using JASP provides a straightforward means of performing reproducible Bayesian hypothesis tests using a graphical “point and click” environment that will be familiar to researchers conversant with other graphical statistical packages, such as SPSS.
Abstract: Despite its popularity as an inferential framework, classical null hypothesis significance testing (NHST) has several restrictions. Bayesian analysis can be used to complement NHST, however, this approach has been underutilized largely due to a dearth of accessible software options. JASP is a recently developed open-source statistical package that facilitates both Bayesian and NHST analysis using a graphical interface. This article provides an applied introduction to Bayesian inference with Bayes factors using JASP. We use JASP to compare and contrast Bayesian alternatives for several common classical null hypothesis significance tests: correlations, frequency distributions, t-tests, ANCOVAs, and ANOVAs. These examples are also used to illustrate the strengths and limitations of both NHST and Bayesian hypothesis testing. A comparison of NHST and Bayesian inferential frameworks demonstrates that Bayes factors can complement p-values by providing additional information for hypothesis testing. Namely, Bayes factors can quantify relative evidence for both alternative and null hypotheses. Moreover, the magnitude of this evidence can be presented as an easy-to-interpret odds ratio. While Bayesian analysis is by no means a new method, this type of statistical inference has been largely inaccessible for most psychiatry researchers. JASP provides a straightforward means of performing reproducible Bayesian hypothesis tests using a graphical “point and click” environment that will be familiar to researchers conversant with other graphical statistical packages, such as SPSS.

258 citations

Journal ArticleDOI
TL;DR: The results indicate that the glasso is inconsistent for the purpose of model selection and does not control the false discovery rate, whereas the proposed method converges on the true model and directly controls error rates.
Abstract: The Gaussian graphical model (GGM) is an increasingly popular technique used in psychology to characterize relationships among observed variables. These relationships are represented as elements in the precision matrix. Standardizing the precision matrix and reversing the sign yields corresponding partial correlations that imply pairwise dependencies in which the effects of all other variables have been controlled for. The graphical lasso (glasso) has emerged as the default estimation method, which uses l1 -based regularization. The glasso was developed and optimized for high-dimensional settings where the number of variables (p) exceeds the number of observations (n), which is uncommon in psychological applications. Here we propose to go 'back to the basics', wherein the precision matrix is first estimated with non-regularized maximum likelihood and then Fisher Z transformed confidence intervals are used to determine non-zero relationships. We first show the exact correspondence between the confidence level and specificity, which is due to 1 minus specificity denoting the false positive rate (i.e., α). With simulations in low-dimensional settings (p ≪ n), we then demonstrate superior performance compared to the glasso for detecting the non-zero effects. Further, our results indicate that the glasso is inconsistent for the purpose of model selection and does not control the false discovery rate, whereas the proposed method converges on the true model and directly controls error rates. We end by discussing implications for estimating GGMs in psychology.

97 citations

Journal ArticleDOI
TL;DR: This article describes the glasso method in the context of the fields where it was developed, and demonstrates that the advantages of regularization diminish in settings where psychological networks are often fitted, and introduces nonregularized methods based on multiple regression and a nonparametric bootstrap strategy.
Abstract: An important goal for psychological science is developing methods to characterize relationships between variables. Customary approaches use structural equation models to connect latent factors to a number of observed measurements, or test causal hypotheses between observed variables. More recently, regularized partial correlation networks have been proposed as an alternative approach for characterizing relationships among variables through off-diagonal elements in the precision matrix. While the graphical Lasso (glasso) has emerged as the default network estimation method, it was optimized in fields outside of psychology with very different needs, such as high dimensional data where the number of variables (p) exceeds the number of observations (n). In this article, we describe the glasso method in the context of the fields where it was developed, and then we demonstrate that the advantages of regularization diminish in settings where psychological networks are often fitted ( p≪n ). We first show that improved properties of the precision matrix, such as eigenvalue estimation, and predictive accuracy with cross-validation are not always appreciable. We then introduce nonregularized methods based on multiple regression and a nonparametric bootstrap strategy, after which we characterize performance with extensive simulations. Our results demonstrate that the nonregularized methods can be used to reduce the false-positive rate, compared to glasso, and they appear to provide consistent performance across sparsity levels, sample composition (p/n), and partial correlation size. We end by reviewing recent findings in the statistics literature that suggest alternative methods often have superior performance than glasso, as well as suggesting areas for future research in psychology. The nonregularized methods have been implemented in the R package GGMnonreg.

74 citations

Journal ArticleDOI
TL;DR: Oxytocin did not improve any aspect of symptomology in schizophrenic patients and there was moderate evidence in favor of the null (no effect of oxytocin) for negative symptoms, suggesting that IN-OT is not an effective therapeutic for schizophrenia.

54 citations


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5,680 citations

01 Jan 2016
TL;DR: The modern applied statistics with s is universally compatible with any devices to read, and is available in the digital library an online access to it is set as public so you can download it instantly.
Abstract: Thank you very much for downloading modern applied statistics with s. As you may know, people have search hundreds times for their favorite readings like this modern applied statistics with s, but end up in harmful downloads. Rather than reading a good book with a cup of coffee in the afternoon, instead they cope with some harmful virus inside their laptop. modern applied statistics with s is available in our digital library an online access to it is set as public so you can download it instantly. Our digital library saves in multiple countries, allowing you to get the most less latency time to download any of our books like this one. Kindly say, the modern applied statistics with s is universally compatible with any devices to read.

5,249 citations

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TL;DR: In this paper, a test based on two conserved CHD (chromo-helicase-DNA-binding) genes that are located on the avian sex chromosomes of all birds, with the possible exception of the ratites (ostriches, etc.).

2,554 citations

Journal ArticleDOI
01 Jun 2018
TL;DR: Two One-Sided Tests (TOSTs) as discussed by the authors were used to test both for the presence of an effect and for the absence of a effect in a test set.
Abstract: Psychologists must be able to test both for the presence of an effect and for the absence of an effect. In addition to testing against zero, researchers can use the two one-sided tests (TOST) proce...

721 citations