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On May 23, 2022, at 9:43 AMCDT, balal izanloo <b.ez...@GMAIL.COM> wrote:
I would remember and apply the k-1 for the number of dummy codes when the number of factorial levels is k, such as 5 dummies for 6 groups with the 3 x 2 design, which should be a between-subject design. Beyond the between-subject design, what I said is still applicable.i think yesOn May 23, 2022, at 13:39, balal izanloo <b.ez...@gmail.com> wrote:as long as I know if the number of levels is k its dummy code is k-1. i find bellow point in the text and may be useful for you3 (Self-efficacy) x 2 (Feedback condition) design with 5 dummy codes for 6 groups:---------- Forwarded message ---------
From: Hyeseung Koh <thedinosa...@gmail.com>
Date: Mon, May 23, 2022 at 4:11 AM
Subject: Re: Simsem error using sim function
To: lavaan <lav...@googlegroups.com>
Please check that #k-1 = the number of dummy codes when k refers to the level of a variable. It would be inaccurate information on the number of dummy codes here: https://github.com/simsem/simsem/blob/master/SupportingDocs/Examples/Version05/exMultipleFormat/moderatedMediation.RIn addition, do you have any plan to construct the command for a multi-group model with three mediators with an independent variable and an outcome variable using an observed variables?2020년 10월 26일 월요일 오후 4시 35분 14초 UTC-5에 donne...@gmail.com님이 작성:I cannot thank you enough. Please let me know if there is anyway I can support your generous work here.On Monday, October 26, 2020 at 3:27:38 PM UTC-5 Terrence Jorgensen wrote:The hypothesis I'm testing is "Self-efficacy will have an indirect effect on performance through effort that is greater in the ambiguous condition than in the unambiguous condition". Should I make any modifications to better reflect this direction?You can add another user-defined parameter that is the difference between indirect effects in those 2 conditions:ind1.diff := ind1.amb - ind1.unamb
ind2.diff := ind2.amb - ind2.unambThen the summaryParam() output will show power for that specific NHST.Terrence D. JorgensenAssistant Professor, Methods and StatisticsResearch Institute for Child Development and Education, the University of Amsterdam
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On Jun 4, 2022, at 12:19 PMCDT, Mauricio Garnier-Villarreal <mauga...@gmail.com> wrote:That part is not automated in simsem. In simsem you can run the simulation through a range of sample size and find the sample size for a specific effect size. You cannot do that to find the effect size has 80% power at a specific sample size.
You would have to do this step by step:1- run the "normal" simulation at your sample size, with like 500 replication for the model at A effect size
2- find the power at that effect size
3- change effect size A for effect size B, and run the simulation again
4- repeat until you find the effect size at which you have
You change the effect size from A to B depending on the results of step 2.
So, f the power is lower than 80% you need to increase the effect size, and if the power is larger than 80% you need to decrease the effect size.
This should take a couple of steps, but still should be doable in a few models to find the desire values
On Friday, June 3, 2022 at 9:09:30 PM UTC+2 thedinosa...@gmail.com wrote:Given a sample size with alpha=.05 and 80% power, which part of the output do you check to find what effect size can be observable at a medium level? Also, which part of the output do you check to find what effect size can be observable at a medium level when 90% power while holding the sample size and alpha level constant ?
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