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        <title>JASP &amp;amp; BayesFactor — Forum</title>
        <link>https://forum.cogsci.nl/</link>
        <pubDate>Mon, 15 Jun 2026 20:45:23 +0000</pubDate>
        <language>en</language>
            <description>JASP &amp; BayesFactor — Forum</description>
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    <item>
        <title>Sphericity test</title>
        <link>https://forum.cogsci.nl/discussion/10151/sphericity-test</link>
        <pubDate>Mon, 15 Jun 2026 09:31:39 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>Moira</dc:creator>
        <guid isPermaLink="false">10151@/discussions</guid>
        <description><![CDATA[<p>Good morning. I have a question. I was doing Bayes Factor repetead measure anova and I checked the sphericity test with a parametric ANOVA due to very high BF with a small N (17). </p><p>The sphericity test was violated so now my question is: which results should I report? The BF or the parametric?</p><p>Thank you in advance!</p>]]>
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        <title>Reporting posterior R² and posterior effect size in Bayesian rmANOVA and paired t-tests</title>
        <link>https://forum.cogsci.nl/discussion/10150/reporting-posterior-r%C2%B2-and-posterior-effect-size-in-bayesian-rmanova-and-paired-t-tests</link>
        <pubDate>Mon, 15 Jun 2026 08:48:03 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>johan_achard</dc:creator>
        <guid isPermaLink="false">10150@/discussions</guid>
        <description><![CDATA[<p>Dear JASP team,</p><p>I am using Bayesian repeated-measures ANOVAs and Bayesian paired-samples t-tests in JASP and would like to clarify how best to report effect sizes and uncertainty measures within a Bayesian framework.</p><p>For the Bayesian repeated-measures ANOVA, JASP provides a &ldquo;Posterior R&sup2;&rdquo;, described as the posterior distribution of explained variance. I am considering reporting the model-averaged posterior R&sup2; together with its 95% credible interval as a model-level measure of effect size/uncertainty.</p><p>I would like to clarify a few points:</p><ul><li>What exactly does the model-averaged posterior R&sup2; correspond to in Bayesian repeated-measures ANOVA? Is it the proportion of variance explained by the fixed effects, by the full model including random factors, or by the model-averaged set of models weighted by posterior model probabilities?</li><li>Should posterior R&sup2; be interpreted as a model-level measure of explained variance rather than as an effect size for a specific factor?</li><li>JASP seems to summarize posterior R&sup2; using a posterior mean and 95% credible interval, whereas Bayesian paired-samples t-tests report the posterior median of the standardized effect size &delta; with a 95% credible interval. Would it be possible to obtain and report either the posterior mean or the posterior median for both quantities? Reporting a posterior mean for R&sup2; and a posterior median for &delta; seems somewhat inconsistent, and I wonder whether a common summary statistic would be preferable for coherent reporting.</li></ul><p>Many thanks for your help and clarifications !</p><p>Johan</p>]]>
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        <title>Interaction is significant, but simple effects is not; Bayes Factor hints towards null hypothesis</title>
        <link>https://forum.cogsci.nl/discussion/10144/interaction-is-significant-but-simple-effects-is-not-bayes-factor-hints-towards-null-hypothesis</link>
        <pubDate>Tue, 09 Jun 2026 11:51:12 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>J111</dc:creator>
        <guid isPermaLink="false">10144@/discussions</guid>
        <description><![CDATA[<p>Hello, everyone,</p><p>I am currently running a 2 x 2 x 2 repeated measures ANCOVA in JASP. I have 2 within factors (animacy, word pairing) and one between factor (group).</p><p>I have found a significant interaction of animacy * group. However, when i use the &ldquo;simple effects&rdquo; option in JASP, it yields that both simple effects are not significant. I have plotted the interaction using the estimated marginal means using R; it is a slight crossover interaction. However the crossover is not as intense to make the simple effects non significant I believe. I have run additional pairwise post-hoc comparisons for the animacy by group interaction (using Bonferroni correction). The pairwise comparisions yielded two significant differences, one of which was that the two levels of the animacy factor for one of the groups (community-dwellers) showed a significant difference.</p><p>I additionally ran a Bayesian analysis for the ANCOVA and found that the BFincl for the animacy * group interaction was only 0.311, hinting towards the null hypothesis.</p><p>Could these issues be due to power? (N = 56; n group 1 = 26; group two = 30). What should I do now? Which additional analysis could I run and which analysis do I report? How do I interpet the interaction?</p><p>Thanks in advance!</p><p>ANCOVA</p><a rel="nofollow" href="https://canada1.discourse-cdn.com/flex030/uploads/mc_stan/optimized/3X/5/f/5f453364764044743b43b10ef6ec781abe7d9b5d_2_690x358.png" data-embedjson="{&quot;embedType&quot;:&quot;image&quot;,&quot;url&quot;:&quot;https:\/\/canada1.discourse-cdn.com\/flex030\/uploads\/mc_stan\/optimized\/3X\/5\/f\/5f453364764044743b43b10ef6ec781abe7d9b5d_2_690x358.png&quot;,&quot;name&quot;:&quot;image&quot;,&quot;attributes&quot;:[],&quot;format&quot;:null,&quot;bodyRaw&quot;:null}">
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<p><br /></p><p>Post Hoc &amp; Simple Effects</p><a rel="nofollow" href="https://canada1.discourse-cdn.com/flex030/uploads/mc_stan/original/3X/1/0/10ce62a7a3faa5e0bb66bd410df65284a2891abc.png" data-embedjson="{&quot;embedType&quot;:&quot;image&quot;,&quot;url&quot;:&quot;https:\/\/canada1.discourse-cdn.com\/flex030\/uploads\/mc_stan\/original\/3X\/1\/0\/10ce62a7a3faa5e0bb66bd410df65284a2891abc.png&quot;,&quot;name&quot;:&quot;image&quot;,&quot;attributes&quot;:[],&quot;format&quot;:null,&quot;bodyRaw&quot;:null}">
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<p><br /></p><p>Bayesian analysis</p><a rel="nofollow" href="https://canada1.discourse-cdn.com/flex030/uploads/mc_stan/optimized/3X/4/0/4006818a0320ab17c64649606e27112621ebcb03_2_690x366.png" data-embedjson="{&quot;embedType&quot;:&quot;image&quot;,&quot;url&quot;:&quot;https:\/\/canada1.discourse-cdn.com\/flex030\/uploads\/mc_stan\/optimized\/3X\/4\/0\/4006818a0320ab17c64649606e27112621ebcb03_2_690x366.png&quot;,&quot;name&quot;:&quot;image&quot;,&quot;attributes&quot;:[],&quot;format&quot;:null,&quot;bodyRaw&quot;:null}">
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    <item>
        <title>BF for Linear Mixed Models</title>
        <link>https://forum.cogsci.nl/discussion/10131/bf-for-linear-mixed-models</link>
        <pubDate>Sun, 24 May 2026 09:01:23 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>Noa_04</dc:creator>
        <guid isPermaLink="false">10131@/discussions</guid>
        <description><![CDATA[<p>I am working on a Registered Report in developmental psychology and need BF₁₀ for a linear mixed model with random intercepts for participants and items. The current Bayesian LMM output in JASP (Version 0.97.0) shows posterior estimates and 95% CIs but no BF₁₀. Is this supported or planned for a future release?</p>]]>
        </description>
    </item>
    <item>
        <title>Interaction is significant, but simple effects are not; Bayes Factor hints a null hypothesis</title>
        <link>https://forum.cogsci.nl/discussion/10145/interaction-is-significant-but-simple-effects-are-not-bayes-factor-hints-a-null-hypothesis</link>
        <pubDate>Tue, 09 Jun 2026 12:00:35 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>J111</dc:creator>
        <guid isPermaLink="false">10145@/discussions</guid>
        <description><![CDATA[<p>Hello, everyone,</p><p>I am currently running a 2 x 2 x 2 repeated measures ANCOVA in JASP. I have 2 within factors (animacy, word pairing) and one between factor (group).</p><p>I have found a significant interaction of animacy * group. However, when i use the &ldquo;simple effects&rdquo; option in JASP, it yields that both simple effects are not significant. I have plotted the interaction using the estimated marginal means using R; it is a slight crossover interaction. However the crossover is not as intense to make the simple effects non significant I believe. I have run additional pairwise post-hoc comparisons for the animacy by group interaction (using Bonferroni correction). The pairwise comparisions yielded two significant differences, one of which was that the two levels of the animacy factor for one of the groups (community-dwellers) showed a significant difference.</p><p>I additionally ran a Bayesian analysis for the ANCOVA and found that the BFincl for the animacy * group interaction was only 0.311, hinting towards the null hypothesis.</p><p>Could these issues be due to power? (N = 56; n group 1 = 26; group two = 30). What should I do now? Which additional analysis could I run and which analysis do I report? How do I interpet the interaction?</p><p>Thanks in advance!</p><p><br /></p><div data-embedjson="{&quot;url&quot;:&quot;https:\/\/forum.cogsci.nl\/uploads\/640\/B1E50Z6EZUWL.png&quot;,&quot;name&quot;:&quot;Screenshot 2026-06-09 133907.png&quot;,&quot;type&quot;:&quot;image\/png&quot;,&quot;size&quot;:282778,&quot;width&quot;:1691,&quot;height&quot;:878,&quot;embedType&quot;:&quot;file&quot;}">
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    <item>
        <title>Edge stability plot Red sample lines not fully displaying in JASP 0.96.0.0</title>
        <link>https://forum.cogsci.nl/discussion/10141/edge-stability-plot-red-sample-lines-not-fully-displaying-in-jasp-0-96-0-0</link>
        <pubDate>Mon, 01 Jun 2026 16:26:41 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>rkimjn</dc:creator>
        <guid isPermaLink="false">10141@/discussions</guid>
        <description><![CDATA[<p>Hi! </p><p>I am working with JASP version 0.96.0.0. </p><p>In the edge stability plot, more than half of the red sample lines (and their red points) are missing and i wonder why. The grey confidence intervals appear normal. </p><p>Any help or fix would be greatly appreciated!</p><div>
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    <item>
        <title>using different filters in the same set of analyses</title>
        <link>https://forum.cogsci.nl/discussion/10137/using-different-filters-in-the-same-set-of-analyses</link>
        <pubDate>Sat, 30 May 2026 07:21:02 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>spelegri</dc:creator>
        <guid isPermaLink="false">10137@/discussions</guid>
        <description><![CDATA[<p>In a series of analyses, I sometimes need to filter different cases for different steps. Currently, when you apply a filter, it applies to all analyses, which means you have to generate separate analysis files for each filter. It would be helpful to be able to incorporate filters into the same set of analyses.</p>]]>
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    <item>
        <title>Is a t-based BIC Bayes factor approximation reasonable for three-level meta-regression?</title>
        <link>https://forum.cogsci.nl/discussion/10130/is-a-t-based-bic-bayes-factor-approximation-reasonable-for-three-level-meta-regression</link>
        <pubDate>Sat, 23 May 2026 19:18:21 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>SzTy</dc:creator>
        <guid isPermaLink="false">10130@/discussions</guid>
        <description><![CDATA[<p>Hello,</p><p>I am conducting a meta-analysis that aims to compare mean values of a continuous variable X between two study types, A and B. The variable ranges roughly from 10 to 100. I also have a few study-level moderators, such as mean age and proportion of females.</p><p>I ran a meta-regression using&nbsp;<code spellcheck="false">metafor</code>. The model is three-level, with samples nested in studies (although only a few studies include more than one sample). It is a random-effects model, fitted with REML and based on t-statistics:</p><pre spellcheck="false">res &lt;- rma.mv(
  yi = yi,
  V = vi,
  mods = ~ Group + other_moderators,
  random = ~ 1 | Study_ID/Sample_ID,
  method = &quot;REML&quot;,
  test = &quot;t&quot;,
  dfs = &quot;contain&quot;,
  data = dat
)
</pre><p><code spellcheck="false">Group</code>&nbsp;is coded as a factor comparing study type A vs B.</p><p>Since I received mostly null findings, I would like to add a simple Bayesian framework to help interpret them. I am thinking about using a BIC-based Bayes factor approximation:</p><p>BF_10 &asymp; exp((t^2 - log(k)) / 2)</p><p>where (t) would be the t-statistic for the group coefficient from my model, and (k) would be the number of samples.</p><p>Do you think this is reasonable in this context? Are there any important pitfalls?</p><p>Thank you</p>]]>
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    <item>
        <title>Process Module</title>
        <link>https://forum.cogsci.nl/discussion/10134/process-module</link>
        <pubDate>Thu, 28 May 2026 16:41:42 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>GCWaters</dc:creator>
        <guid isPermaLink="false">10134@/discussions</guid>
        <description><![CDATA[<p>Good morning! I have an issue with the process module that is confounding me. I&#39;m running a series of simple models: One IV, one DV, one Mediator, and one Moderator (3 levels, nominal). Requesting Hayes output 15 or 59. In my output, the direct, indirect, and total effects for the first level of my moderator are identical to those for the third level of my moderator--always, across five different IV&#39;s and two different mediating variables. I know that this can be a sign of no mediating effect, but this doesn&#39;t match up with output from Mplus, and it seems unlikely to be occurring across all these analyses. And by identical, I mean the estimate, standard error, z-value, p value, and lower/upper 95% CI&#39;s.</p><p>Any thoughts on why this might be happening?</p>]]>
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    <item>
        <title>jaspModuleTemplate install</title>
        <link>https://forum.cogsci.nl/discussion/10077/jaspmoduletemplate-install</link>
        <pubDate>Tue, 03 Mar 2026 12:21:11 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>rvgardt</dc:creator>
        <guid isPermaLink="false">10077@/discussions</guid>
        <description><![CDATA[<p>Is the jaspModuleTemplate still current for its installation in JASP 0.95.4? I&#39;ve attempted to install &amp; run the template module using documented methods, and others. Get a &quot;Waiting for initialization&quot; hang, at best, R engine connection fail, even if UI widgets appear. Maybe if there is any updated info I need to know, I best leave the question at that.</p><p>Otherwise I could expand on what I&#39;ve tried and their specific results (e.g. &quot;Install Developer Module&quot; method, via Preferences -&gt; Advanced; via renv, building via RStudio project or separately within JASP R console; &quot;Install Module&quot; method with manual bundling of the .jaspmodule; manual copy into %APPDATA%\JASP\JASP\modules). I could also document the checks per method (e.g., renv::status() and library(jaspModuleTemplate) ok, jaspBase and jaspGraphs linked; simple &quot;print-to-file&quot; R functions).</p><p>Have used AI to scour JASP documents and check each step and suggest others, and review log files. Their diagnosis is &quot;There is a fundamental breakdown in how JASP handles local developer paths&quot;, or &quot;The &quot;Developer Mode&quot; appears to be broken for local builds, as the engine cannot maintain a stable link to the package it supposedly just &quot;installed.&quot;&quot; Seems implausible but I should ask before I keep going. Thanks in advance.</p>]]>
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        <title>Analysing DoE experiment with center points</title>
        <link>https://forum.cogsci.nl/discussion/10118/analysing-doe-experiment-with-center-points</link>
        <pubDate>Wed, 29 Apr 2026 07:55:55 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>eric</dc:creator>
        <guid isPermaLink="false">10118@/discussions</guid>
        <description><![CDATA[<p>For JASP, the coefficient for center points will not be calculated and its corresponding p-value. This will affect the decision make add or drop terms as the standard error will be affected. I did a comparison with another software using the same dataset and found this difference. Any recommendations on how I should approach using JASP so that I will be able to make proper conclusion based on the data.</p>]]>
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    <item>
        <title>merging two files in JASP</title>
        <link>https://forum.cogsci.nl/discussion/9040/merging-two-files-in-jasp</link>
        <pubDate>Mon, 18 Dec 2023 16:18:02 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>mercator88</dc:creator>
        <guid isPermaLink="false">9040@/discussions</guid>
        <description><![CDATA[<p>I have two files, each with the same primary key. I would like to merge the data from these two files into one file, as in the example below:</p><p>PTID  creatinine</p><p>1            1.5</p><p>2             0.8</p><p><br /></p><p>PTID  age</p><p>1          55</p><p>2          70</p><p><br /></p><p>PTID   creatinine age</p><p>1             1.5        55</p><p>2             0.8        70</p><p><br /></p><p>Is there a way to do this in JASP?</p><p><br /></p><p>Thank you!</p><p>Andrew Kramer</p>]]>
        </description>
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    <item>
        <title>How to merge data sets in JASP</title>
        <link>https://forum.cogsci.nl/discussion/8023/how-to-merge-data-sets-in-jasp</link>
        <pubDate>Tue, 14 Jun 2022 13:02:12 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>ClaraIsabell</dc:creator>
        <guid isPermaLink="false">8023@/discussions</guid>
        <description><![CDATA[<p>Hi everyone! I would like to merge data sets in JASP, however, I cannot find any instructions on how to do it.</p><p>I would like to sort them by a key variable, like in SPSS.</p><p>Can anyone advise?</p>]]>
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        <title>JASP Random Forest - Variable Importance Scores</title>
        <link>https://forum.cogsci.nl/discussion/10132/jasp-random-forest-variable-importance-scores</link>
        <pubDate>Tue, 26 May 2026 16:47:37 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>gabriellej</dc:creator>
        <guid isPermaLink="false">10132@/discussions</guid>
        <description><![CDATA[<p>Hello! </p><p>I am using Random Forest on JASP for a multiclass classification problem, mainly to obtain variable importance scores. I also ran the same analysis in RStudio using the ranger package, with which I am more familiar. But for some reason, I obtain very different variable importance rankings between JASP and ranger (both for Mean Decrease in Accuracy and Total Increase in Node Purity), and the differences are stable across runs. I am using the same dataset and predictors in both analyses.</p><p>I am wondering whether JASP uses different defaults or a different implementation of Random Forest than ranger, and whether this could explain the discrepancy. Does anyone know what might cause such differences, or how I could check whether the model settings are truly equivalent across the two programs?</p><p>Thanks in advance for the help!</p><p>Gabrielle</p>]]>
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        <title>Não consigo abrir a base de dados</title>
        <link>https://forum.cogsci.nl/discussion/10129/nao-consigo-abrir-a-base-de-dados</link>
        <pubDate>Fri, 22 May 2026 22:48:36 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>DanielaMendes</dc:creator>
        <guid isPermaLink="false">10129@/discussions</guid>
        <description><![CDATA[<div data-embedjson="{&quot;url&quot;:&quot;https:\/\/forum.cogsci.nl\/uploads\/653\/2M3SW9VH9ANP.docx&quot;,&quot;name&quot;:&quot;Novo Documento do Microsoft Word.docx&quot;,&quot;type&quot;:&quot;application\/vnd.openxmlformats-officedocument.wordprocessingml.document&quot;,&quot;size&quot;:374794,&quot;embedType&quot;:&quot;file&quot;}">
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</div><p>Boa noite, necessito de abrir duas bases de dados para fazer um trabalho e n&atilde;o consigo sair da imagem que coloquei em anexo, algu&eacute;m me consegue ajudar sff?</p><p>Obrigada.</p><p>Daniela Mendes</p>]]>
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        <title>Opening CSV file in JASP 0.97.0?</title>
        <link>https://forum.cogsci.nl/discussion/10128/opening-csv-file-in-jasp-0-97-0</link>
        <pubDate>Wed, 20 May 2026 16:28:32 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>PerPalmgren</dc:creator>
        <guid isPermaLink="false">10128@/discussions</guid>
        <description><![CDATA[<p>Hi,</p><p>Is it new that JASP now open data preview&nbsp;window when you open a CSV file? Can this be turned off!</p><p>Per the JASP lover🥰</p>]]>
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        <title>JASP Bayes RM Anova - matched models</title>
        <link>https://forum.cogsci.nl/discussion/10099/jasp-bayes-rm-anova-matched-models</link>
        <pubDate>Mon, 30 Mar 2026 03:58:46 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>SamL</dc:creator>
        <guid isPermaLink="false">10099@/discussions</guid>
        <description><![CDATA[<p>I&#39;m very new to Bayes, and I am trying to run a Bayesian repeated-measures ANOVA to complement NHST analyses. </p><p>The RM ANOVA is 3x2, with Treatment (Control/Stress) X Visual Field (LVF/RVF) X Stimuli (Word/Non-Word).</p><p>The frequentist approach is revealing main effects of VF and Stimuli but no interaction effects:</p><div>
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<p>When trying to find information about whether to select &quot;Across all models&quot; or &quot;Across matched models&quot; when computing the Bayesian RM ANOVA, I read that &quot;Across matched models&quot; is more similar to a frequentist RM ANOVA as it only compares to models with the same predictors.</p><p>When I run the Bayes RM ANOVA selecting &quot;Across matched models&quot;, it appears there is substantial evidence in support of the interaction:</p><div>
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<p> I&#39;m surprised to see such a large BF (41) when it did not reach significance in the frequentist analysis (although the effect size appears large).</p><p><br /></p><p>However, when I select the other option &quot;Across all models&quot;, evidence in support of the interaction is anecdotal:</p><div>
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<p><br /></p><p>I guess I&#39;m confused how the options can return such different results. I&#39;ve read a few other posts querying this, but I&#39;m still unclear what the best approach is.</p><p>So, my questions are:</p><p>1) Can somebody possibly provide a clearer definition explaining the difference between these two options?</p><p>2) Is one of these options more comparable with a frequentist RM ANOVA than the other?</p><p><br /></p><p>Thanks in advance!</p>]]>
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        <title>Module development - passing html or latex output from CRAN R functions directly</title>
        <link>https://forum.cogsci.nl/discussion/10123/module-development-passing-html-or-latex-output-from-cran-r-functions-directly</link>
        <pubDate>Sun, 10 May 2026 21:58:43 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>ParanoidAndroid</dc:creator>
        <guid isPermaLink="false">10123@/discussions</guid>
        <description><![CDATA[<p>I want to build a wrapper JASP module for gtsummary R package, which allows creating publication ready tables. The function itself already creates correctly formatted tables in HTML (or even in Latex, RTF, Word), which seems to obviate the need to use the jaspTable object functionality. Actually, using jaspTable object would mean recreating all the work that has been put in formatting the table with gtsummary. Is it possible to use the HTML element to render the table in the results section?</p>]]>
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        <title>(Bayesian) Process Model with Control Variables</title>
        <link>https://forum.cogsci.nl/discussion/10074/bayesian-process-model-with-control-variables</link>
        <pubDate>Wed, 25 Feb 2026 10:45:41 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>Mila_Marinova</dc:creator>
        <guid isPermaLink="false">10074@/discussions</guid>
        <description><![CDATA[<p>Hello everyone, </p><p>I would like to conduct a simple mediation (X --&gt; M --&gt; Y) using JASP classical and bayesian process module. However, I would like to include two other variables as controls, but I struggle to find a straightforward information whether and how this can be done in JASP. I tried to simply add them in the continuous predictors box, but I am nit 100% whether JASP automatically partials them out?</p><p>Any suggestions are greatly appreciated! </p><p>Thanks in advance, </p><p>Mila</p>]]>
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        <title>EFA vs CFA, saving factor scores</title>
        <link>https://forum.cogsci.nl/discussion/10109/efa-vs-cfa-saving-factor-scores</link>
        <pubDate>Mon, 13 Apr 2026 10:01:37 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>LarsdeVreugd</dc:creator>
        <guid isPermaLink="false">10109@/discussions</guid>
        <description><![CDATA[<p>Hi all,</p><p>I&#39;m running a SEM model with multiple variables, some observed and some latent. I want to obtain factor scores for the latent variables, so I did a separate EFA (1-factor, 3 indicators) and checked the &#39;Add FA scores to data&#39; box. But now I have 2 questions (for context, I&#39;m not a statistician): </p><p>1) I don&#39;t really understand how the calculation of this variable works. Does it transform the raw indicator values with (e.g.) factor loadings, controlled for something else?</p><p>2) I also did a CFA (1-factor, same 3 indicators) and saved the factor score, but saw these scores are slightly different. The factor loadings differ as well, so I&#39;m guessing it&#39;s got to do with that. But now the question is; which of the factor scores should I use, from the EFA or the CFA?</p><p>Hope you can help me with my questions, thanks in advance!</p><p><br /></p><p>Kind regards,</p><p>Lars</p>]]>
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        <title>running mirt in JASP</title>
        <link>https://forum.cogsci.nl/discussion/10097/running-mirt-in-jasp</link>
        <pubDate>Fri, 27 Mar 2026 17:21:36 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>Jerome</dc:creator>
        <guid isPermaLink="false">10097@/discussions</guid>
        <description><![CDATA[<p>Hi - New to using JASP but would love to be able to run mirt in it so I can perform M4 similarity analyses. Any help would be appreciated. Thanks.</p>]]>
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        <title>Bayesian rmANOVA Model Comparison and Post-hoc tests deviate</title>
        <link>https://forum.cogsci.nl/discussion/10062/bayesian-rmanova-model-comparison-and-post-hoc-tests-deviate</link>
        <pubDate>Fri, 06 Feb 2026 12:21:28 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>kwellstein</dc:creator>
        <guid isPermaLink="false">10062@/discussions</guid>
        <description><![CDATA[<div>
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<p>I ran a Baysian rmANOVA with a factor time and a factor conditions. I am unsure how to interpret these results though. There seems to be string evidence for the main effect of time compared to the null model. But when I look at the post-hoc tests there doesnt seem to be evidence for an effect of time. This is consistent with the descriptive plot: </p><div>
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<p><br /></p><p>I was first thinking that it may be because the main effect of time collapses all conditions but they do not seem to be very different even then. </p><p>Can anyone help me interpret this output?</p><p>Thank you for your help!</p>]]>
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        <title>B-SEM</title>
        <link>https://forum.cogsci.nl/discussion/10060/b-sem</link>
        <pubDate>Wed, 04 Feb 2026 23:40:54 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>jesuspulido</dc:creator>
        <guid isPermaLink="false">10060@/discussions</guid>
        <description><![CDATA[<p>En JASP no aparece el m&oacute;dulo B-SEM y necesito este m&oacute;dulo para hacer an&aacute;lisis psicom&eacute;trico con estad&iacute;stica bayesian</p>]]>
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        <title>MANOVA and Discriminant Function Analysis</title>
        <link>https://forum.cogsci.nl/discussion/10065/manova-and-discriminant-function-analysis</link>
        <pubDate>Tue, 17 Feb 2026 09:48:22 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>wdnorman</dc:creator>
        <guid isPermaLink="false">10065@/discussions</guid>
        <description><![CDATA[<p>I am interested in performing a MANOVA but I want to build the prediction equation after running the analysis which means I need unstandardized coefficients. The MANOVA module doesn&#39;t aloow for this. The Linear Discriminant analysis in the Machine Learning module provides the linear discriminant coefficients but it is not clear whether these are standardized or unstandardized. In the analysis I ran the output included 2 linear discriminant functions (LD1 and LD2). Is there a way to know which of these accounts for more of the variability?  Thanks</p>]]>
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        <title>Two-Way factorial Mixed Model usinf Mixed Model Procedure of Henderson</title>
        <link>https://forum.cogsci.nl/discussion/10070/two-way-factorial-mixed-model-usinf-mixed-model-procedure-of-henderson</link>
        <pubDate>Sat, 21 Feb 2026 14:09:40 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>JulioCerono</dc:creator>
        <guid isPermaLink="false">10070@/discussions</guid>
        <description><![CDATA[<p>I&acute;ve been trying to duplicate the analysis of the  classic machine x operator example given in the paper by McLean, Sanders and Stroup 1991, A unified approach to Mixed Linear Models , The American Statistician, 45 (1): 54-63). Unfortunately, I could not get the solution vector<em> B</em> of fixed effects (machines) and <em>U</em> of random effects (person), and neither the estiamtes of variance components for the Operator, machine x operator and residual variances by REML. Apparently, the current  module of Mixed Linear Model of JASP, does not suppport the analysis  for such an example of a 2-way factorial model with one randdom effect, using the Mixed Model Procedure (Henderson1963, 1973). </p><p> </p><p>Is there any way that we can program a package for such type of statistical problems?.</p>]]>
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        <title>jaspModuleTemplate install</title>
        <link>https://forum.cogsci.nl/discussion/10076/jaspmoduletemplate-install</link>
        <pubDate>Tue, 03 Mar 2026 12:17:28 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>rvgardt</dc:creator>
        <guid isPermaLink="false">10076@/discussions</guid>
        <description><![CDATA[<p>[duplicate]</p>]]>
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        <title>Bayesian Repeated Measures ANOVA</title>
        <link>https://forum.cogsci.nl/discussion/7975/bayesian-repeated-measures-anova</link>
        <pubDate>Tue, 10 May 2022 16:46:24 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>Mateus</dc:creator>
        <guid isPermaLink="false">7975@/discussions</guid>
        <description><![CDATA[<p>Hi everyone,</p><p>I am trying to understand the results of a Bayesian repeated-measures ANOVA.</p><p>I want to examine if there is a difference between the two groups (with different subjects) that were tested multiple times for an outcome measure (sprint time). I considered the pre-test, post-test and tapering 1 as &quot;repeated measures factors&quot;, the pre-test, post-test and tapering 1 performance as &quot;repeated measure cells&quot;, and the groups as &quot;between-subjects factors&quot;. In addition, in the main options (order), I select &lsquo;Compare to null model&rsquo;.</p><p>Can you please tell me if my interpretation is correct?</p><p><em>&quot;Using a Bayesian RM ANOVA (prior probabilities of each model were equal to 0.5), the Bayes factor indicates that the data is best represented by a model that included time point as the predictor, the group, and the interaction between the time-point and the group. Post hoc comparisons of pre-test&nbsp;vs.&nbsp;post-test and pre-test&nbsp;vs.&nbsp;tapering 1 revealed posterior odds of 20788.04 and 329497.52 against the null hypothesis, which indicates decisive evidence in favour of the alternative hypothesis. When comparing post-test&nbsp;vs.&nbsp;tapering 1, there was anecdotal evidence in favour of the null hypothesis. Additionally, post-hoc group comparisons exposed posterior odds of 20788.04, indicating moderate evidence in favour of the null hypothesis (no differences between groups).&quot;</em></p><div>
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<p>Thanks in advance,</p><p>Nuno Mateus</p>]]>
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        <title>Computed column error</title>
        <link>https://forum.cogsci.nl/discussion/10082/computed-column-error</link>
        <pubDate>Thu, 12 Mar 2026 10:21:26 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>Mattyb</dc:creator>
        <guid isPermaLink="false">10082@/discussions</guid>
        <description><![CDATA[<p>I am creating a summary column for my data and I keep receiving and error message &lt;text&gt;:2:1: unexpected &#39;&amp;&#39; . I am new to JASP so I am not sure what this means. </p><p>Thanks</p>]]>
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        <title>Inconsistent CFA results across different JASP versions</title>
        <link>https://forum.cogsci.nl/discussion/10095/inconsistent-cfa-results-across-different-jasp-versions</link>
        <pubDate>Tue, 24 Mar 2026 06:32:34 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>Fan</dc:creator>
        <guid isPermaLink="false">10095@/discussions</guid>
        <description><![CDATA[<p>We found that using the DWLS method for CFA estimation yields different results in versions 0.19.3.0 and 0.96.0.0.</p>]]>
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        <title>Computed Columns on Text and Filters on Visuals</title>
        <link>https://forum.cogsci.nl/discussion/10079/computed-columns-on-text-and-filters-on-visuals</link>
        <pubDate>Thu, 05 Mar 2026 14:57:57 +0000</pubDate>
        <category>JASP &amp; BayesFactor</category>
        <dc:creator>asjones</dc:creator>
        <guid isPermaLink="false">10079@/discussions</guid>
        <description><![CDATA[<p>Still new to JASP, but ran into something I figured could be done in JASP but can&#39;t figure it and now wonder if the options exist.</p><p>I was looking to add a computed column in my data in JASP. In simple terms the computation is look at this other column and depending on what is in the other column produce a &quot;friendly name&quot; for the region for that record.  The GUI for computed column definition looks to mimic the Filter options. That is a good thing as I might need some of the same features in Filter and Computed column.</p><p>In general the formula wold look like for the  New Column = If Column A Contains 123 anywhere then return Africa, if  column A Contains 456 then return Asia,  If Column A contains 987 .... etc.</p><p>In general for computed columns and maybe filters nice, but simple set of standard text functions like IF, Left, Right, Mid, Contains, AND (boolean), OR (boolean) would be very helpful. I could also see this useful for Filters.</p><p>Does something like this exist without hand writing R or doing it in the source before the data lands in JASP?</p><p>If it does not exist does anyone know of a related issue? I could not find an issue to follow before making one. </p><p><br /></p><p>I can see this for both Global Filters and for the proposed option to filter on the visuals/analysis as listed in this issue I keep hoping will land.</p><div data-embedjson="{&quot;body&quot;:&quot;Enhancement: Currently, filtering is done in the data sheet, and applies to all analyses in a JASP file. Often, however, one may want to perform different t-tests on different subgroups in the same...&quot;,&quot;photoUrl&quot;:&quot;https:\/\/opengraph.githubassets.com\/a0249f3ff91a4ad8b6a82226d2d9a309b324cf96abf0e9809c66ca3fd668a7bb\/jasp-stats\/jasp-issues\/issues\/1330&quot;,&quot;url&quot;:&quot;https:\/\/github.com\/jasp-stats\/jasp-issues\/issues\/1330&quot;,&quot;embedType&quot;:&quot;link&quot;,&quot;name&quot;:&quot;[Feature-Request]: use filters in the analyses rather than in the data \u00b7 Issue #1330 \u00b7 jasp-stats\/jasp-issues&quot;}">
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</div><p><br /></p><p>Love to hear others thoughts on the above items.</p><p><br /></p><p>Alan</p>]]>
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