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The eight summer school on statistical methods for linguistics and psychology

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IntroductionBayes

An introduction to Bayesian Data Analysis: A one-week course
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Linear mixed models in Linguistics and Psychology: A Comprehensive Introduction
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LM

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lingpsych

Datasets and models included in the book "Linear Mixed Models for Linguistics and Psychology: A Comprehensive Introduction".
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IntroBayesSMLP2021

This is the course home page for Intro Bayes at SMLP 2021.
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VasishthNicenboimPart1

This repository contains the code and data that accompany the paper: Statistical methods for linguistic research: Foundational Ideas - Part I, by Shravan Vasishth and Bruno Nicenboim. Language and Linguistics Compass 10/8 (2016): 349โ€“369, doi: 10.1111/lnc3.12201.
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NicenboimVasishthPart2

Code and data to accompany the article Statistical methods for linguistic research: Foundational Ideas - Part II, by Bruno Nicenboim and Shravan Vasishth. Language and Linguistics Compass, 2016. doi: 10.1111/lnc3.12207
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ESSLLI2015Vasishth_Week1

Material for ESSLLI 2015 (Week 1) course entitled Statistical methods for linguistic research: Foundational Ideas
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FoundationsOfMathematics

Lecture notes for the foundations of mathematics course taught in winter semester as part of the MSc in Cognitive Systems.
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MetaAnalysisJaegerEngelmannVasishth2017

Code and data to accompany paper by L.A. Jรคger, Engelmann, & Vasishth, 2017. Similarity-based interference in sentence comprehension: Literature review and Bayesian meta-analysis. Journal of Memory and Language. doi:10.1016/j.jml.2017.01.004
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StanJAGSexamples

Example code using Stan and JAGS for psycholinguistic data
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An Introductiion to Bayesian Data Analysis
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StatisticsNotes

Everything I learnt in graduate school in statistics.
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jopbayes

Code and data for the Journal of Phonetics article entitled Bayesian data analysis in the phonetic sciences: A tutorial introduction
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ESSLLI2015Vasishth_Week2

This repository contains the code and slides for the Statistics Methods course taught in Week 2 at ESSLLI 2015, Barcelona.
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22

SMLP2017

Summer School: Statistical Methods for Linguistics and Psychology, 2017, University of Potsdam, Germany
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23

smlp2021

The Fifth Summer School in Statistical Methods for Linguistics and Psychology
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24

Intro_Bayes_CogSci

An Introduction to Bayesian Data Analysis for Cognitive Science, Vasishth, Nicenboim, Schad, to appear, CRC Press
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25

VasishthLab

Psycholinguistic Data and Example Analyses from Vasishth Lab (Potsdam)
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26

SMLP2018

Statistical Methods for Linguistics and Psychology, University of Potsdam, Germany, 10-14 September 2018
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EMLAR2022BayesTutorial

Materials for the EMLAR Bayes 1 and 2 tutorials
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28

ReproducibleWorkflows

Materials for MPI Leipzig workshop: https://www.cbs.mpg.de/events/23219/1413783
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SubsettingProblem

This repo contains the code relating to two blog posts at https://vasishth-statistics.blogspot.com/
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The website for SMLP 2022, 12-16 Sept 2022.
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31

BayesianLinearModeling

Lecture notes for the Bayesian linear modeling course taught in winter semester at the University of Potsdam
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32

powerpose

Reanalysis of Carney, Cuddy, and Yap 2010 data on power posing.
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33

MPILeipzig2019

Materials for the MPI Leipzig workshop and hands-on session on open science
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34

MScDissertationVasishth

Code+documentation and data to accompany my MSc dissertation in statistics from the School of Mathematics and Statistics, Sheffield, UK.
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35

manuscript_LogacevVasishth_CogSci_SMCM

Code + Data for the Logacev & Vasishth paper on underspecification and parallel processing. Proposes the SMCM as a task-dependent model of ambiguity resolution.
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36

MichiganLinguistics2020talk

slides and materials for Michigan talk on Feb 6, 2020
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vasishth.github.io

Shravan Vasishth's home page
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38

VNEBTiCS2019

code for the draft of the paper by Vasishth et al: Computational models of retrieval processes in sentence processing
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agrmtreflexives

Large-sample Multilab replication attempt of Dillon et al 2013
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vasishth

Config files for my GitHub profile.
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EMLAR2021BayesTutorial

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42

rstyleguidepotsdam

Style guide for R coding, University of Potsdam
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43

ExpLing

Reproducible code and data for the chapter New Directions in Statistical Analysis for Experimental Linguistics
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StatSigFilter

The Statistical Significance Filter
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smlp2019

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RetrievalModels

Website to accomany book Sentence Comprehension as a Cognitive Process
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47

embraceuncertainty

Code and data to accompany the paper: Shravan Vasishth and Andrew Gelman. How to embrace variation and accept uncertainty in linguistic and psycholinguistic data analysis. Linguistics, 59:1311--1342, 2021. doi: https://doi.org/10.1515/ling-2019-0051
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VasishthEtAl2013PLoSONE

Data and code for the paper Shravan Vasishth, Zhong Chen, Qiang Li, and Gueilan Guo. Processing Chinese Relative Clauses: Evidence for the Subject-Relative Advantage. PLoS ONE, 8(10):1-14, 10 2013.
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