Besides, I'm warned as follows.
In checkConv(attr(opt, "derivs"), opt$par, ctrl = control$checkConv, :
Model failed to converge with max|grad| = 0.063422 (tol = 0.001,
component 4)
Here is how the output looks when stimulus is used as a fixed effect.
Generalized linear mixed model fit by maximum likelihood (Laplace
Approximation) [
glmerMod]
Family: binomial ( logit )
Formula: match ~ Listgp + stimulus + (1 | Listener)
Data: PATdata
AIC BIC logLik deviance df.resid
5154.3 5259.5 -2562.2 5124.3 8193
Scaled residuals:
Min 1Q Median 3Q Max
-25.0764 -0.2706 -0.1939 0.2472 10.5131
Random effects:
Groups Name Variance Std.Dev.
Listener (Intercept) 1.743 1.32
Number of obs: 8208, groups: Listener, 228
Fixed effects:
Estimate Std. Error z value Pr(>|z|)
(Intercept) 2.7561 0.2657 10.371 < 2e-16 ***
ListgpTA 0.1741 0.3147 0.553 0.580128
ListgpTQ 0.0810 0.2575 0.315 0.753094
stimulushaaDD -5.4415 0.2071 -26.272 < 2e-16 ***
stimulushad -4.2953 0.1822 -23.569 < 2e-16 ***
stimulushaDD -5.4946 0.2086 -26.337 < 2e-16 ***
stimulushid -5.1519 0.1994 -25.832 < 2e-16 ***
stimulushiDD -0.6708 0.1801 -3.724 0.000196 ***
stimulushiid -5.8124 0.2186 -26.593 < 2e-16 ***
stimulushiiDD -5.5101 0.2091 -26.353 < 2e-16 ***
stimulushud -0.2016 0.1915 -1.053 0.292345
stimulushuDD -5.6188 0.2123 -26.462 < 2e-16 ***
stimulushuud -5.6107 0.2121 -26.450 < 2e-16 ***
stimulushuuDD -5.3207 0.2038 -26.109 < 2e-16 ***
---
Signif. codes: 0 ?***? 0.001 ?**? 0.01 ?*? 0.05 ?.? 0.1 ? ? 1
Correlation of Fixed Effects:
(Intr) LstgTA LstgTQ stimulushaaDD stimulushad stimulushaDD
ListgpTA -0.613
ListgpTQ -0.755 0.636
stimulushaaDD -0.394 -0.007 0.004
stimulushad -0.440 -0.006 0.005 0.605
stimulushaDD -0.392 -0.007 0.003 0.555 0.601
stimulushid -0.407 -0.007 0.004 0.572 0.624 0.569
stimulushiDD -0.414 0.000 0.001 0.534 0.606 0.530
stimulushiid -0.376 -0.006 0.003 0.536 0.578 0.533
stimulushiiDD -0.391 -0.007 0.003 0.554 0.600 0.551
stimulushud -0.386 0.000 0.000 0.497 0.564 0.493
stimulushuDD -0.385 -0.007 0.003 0.548 0.592 0.545
stimulushuud -0.386 -0.007 0.003 0.548 0.593 0.545
stimulushuuDD -0.400 -0.007 0.004 0.564 0.613 0.561
stimulushid stimulushiDD stimulushiid stimulushiiDD
stimulushud
ListgpTA
ListgpTQ
stimulushaaDD
stimulushad
stimulushaDD
stimulushid
stimulushiDD 0.554
stimulushiid 0.549 0.506
stimulushiiDD 0.568 0.529 0.533
stimulushud 0.516 0.569 0.471 0.492
stimulushuDD 0.562 0.521 0.527 0.544 0.484
stimulushuud 0.562 0.522 0.528 0.545 0.485
stimulushuuDD 0.579 0.543 0.542 0.560 0.505
stimulushuDD stimulushuud
ListgpTA
ListgpTQ
stimulushaaDD
stimulushad
stimulushaDD
stimulushid
stimulushiDD
stimulushiid
stimulushiiDD
stimulushud
stimulushuDD
stimulushuud 0.539
stimulushuuDD 0.554 0.554
Compared to when it is used as a random effect.
m0.1 <- glmer(match ~ Listgp + (1|stimulus) + (1|Listener), data = PATdata,
family = "binomial")
Generalized linear mixed model fit by maximum likelihood (Laplace
Approximation) [
glmerMod]
Family: binomial ( logit )
Formula: match ~ Listgp + (1 | stimulus) + (1 | Listener)
Data: PATdata
AIC BIC logLik deviance df.resid
5218.3 5253.4 -2604.2 5208.3 8203
Scaled residuals:
Min 1Q Median 3Q Max
-21.9276 -0.2804 -0.2059 0.2740 9.4275
Random effects:
Groups Name Variance Std.Dev.
Listener (Intercept) 1.676 1.294
stimulus (Intercept) 4.949 2.225
Number of obs: 8208, groups: Listener, 228; stimulus, 12
Fixed effects:
Estimate Std. Error z value Pr(>|z|)
(Intercept) -1.3754 0.6792 -2.025 0.0429 *
ListgpTA 0.2284 0.3073 0.743 0.4572
ListgpTQ 0.1432 0.2513 0.570 0.5687
---
Signif. codes: 0 ?***? 0.001 ?**? 0.01 ?*? 0.05 ?.? 0.1 ? ? 1
Correlation of Fixed Effects:
(Intr) LstgTA
ListgpTA -0.235
ListgpTQ -0.288 0.636
Thanks,
Shad
On 26 October 2015 at 12:47, Thierry Onkelinx <thierry.onkelinx at inbo.be>
wrote:
Dear Shad,
Please don't post in HTML since it makes the model output unreadable.
You need to be more clear on "R seems not to like it".
Best regards,
ir. Thierry Onkelinx
Instituut voor natuur- en bosonderzoek / Research Institute for Nature and
Forest
team Biometrie & Kwaliteitszorg / team Biometrics & Quality Assurance
Kliniekstraat 25
1070 Anderlecht
Belgium
To call in the statistician after the experiment is done may be no more
than asking him to perform a post-mortem examination: he may be able to say
what the experiment died of. ~ Sir Ronald Aylmer Fisher
The plural of anecdote is not data. ~ Roger Brinner
The combination of some data and an aching desire for an answer does not
ensure that a reasonable answer can be extracted from a given body of data.
~ John Tukey
2015-10-26 10:37 GMT+01:00 Shadiya Al Hashmi <saah500 at york.ac.uk>:
I'm using a binomial glmer mixed effects model.
One variable that I have, 'stimulus' has 12 levels. The levels were not
randomly selected but were rather chosen as per the study design, so I
have
used the variable ?stimulus? as a fixed variable in the basic model but R
seems not to like it (at least this is my interpretation) given the way
the
output looks and the amount of time R takes to process it.
m0.1 <- glmer(match ~ Listgp + stimulus + (1|Listener), data = PATdata,
family = "binomial")
summary(m0.1) Generalized linear mixed model fit by maximum likelihood
(Laplace Approximation) [ glmerMod] Family: binomial ( logit ) Formula:
match ~ Listgp + stimulus + (1 | Listener) Data: PATdata
AIC BIC logLik deviance df.resid
5154.3 5259.5 -2562.2 5124.3 8193
Scaled residuals: Min 1Q Median 3Q Max -25.0764 -0.2706 -0.1939 0.2472
10.5131
Random effects: Groups Name Variance Std.Dev. Listener (Intercept) 1.743
1.32
Number of obs: 8208, groups: Listener, 228
Fixed effects: Estimate Std. Error z value Pr(>|z|)
(Intercept) 2.7561 0.2657 10.371 < 2e-16 * ListgpTA 0.1741 0.3147 0.553
0.580128
ListgpTQ 0.0810 0.2575 0.315 0.753094
stimulushaaDD -5.4415 0.2071 -26.272 < 2e-16 stimulushad -4.2953 0.1822
-23.569 < 2e-16 stimulushaDD -5.4946 0.2086 -26.337 < 2e-16 stimulushid
-5.1519 0.1994 -25.832 < 2e-16 stimulushiDD -0.6708 0.1801 -3.724 0.000196
stimulushiid -5.8124 0.2186 -26.593 < 2e-16 stimulushiiDD -5.5101 0.2091
-26.353 < 2e-16 stimulushud -0.2016 0.1915 -1.053 0.292345
stimulushuDD -5.6188 0.2123 -26.462 < 2e-16 stimulushuud -5.6107 0.2121
-26.450 < 2e-16 *
stimulushuuDD -5.3207 0.2038 -26.109 < 2e-16 ***
Signif. codes: 0 ?? 0.001 ?? 0.01 ?? 0.05 ?.? 0.1 ? ? 1
Correlation of Fixed Effects: (Intr) LstgTA LstgTQ stimulushaaDD
stimulushad stimulushaDD ListgpTA -0.613
ListgpTQ -0.755 0.636
stimulushaaDD -0.394 -0.007 0.004
stimulushad -0.440 -0.006 0.005 0.605
stimulushaDD -0.392 -0.007 0.003 0.555 0.601
stimulushid -0.407 -0.007 0.004 0.572 0.624 0.569
stimulushiDD -0.414 0.000 0.001 0.534 0.606 0.530
stimulushiid -0.376 -0.006 0.003 0.536 0.578 0.533
stimulushiiDD -0.391 -0.007 0.003 0.554 0.600 0.551
stimulushud -0.386 0.000 0.000 0.497 0.564 0.493
stimulushuDD -0.385 -0.007 0.003 0.548 0.592 0.545
stimulushuud -0.386 -0.007 0.003 0.548 0.593 0.545
stimulushuuDD -0.400 -0.007 0.004 0.564 0.613 0.561
stimulushid stimulushiDD stimulushiid stimulushiiDD stimulushud ListgpTA
ListgpTQ
stimulushaaDD
stimulushad
stimulushaDD
stimulushid
stimulushiDD 0.554
stimulushiid 0.549 0.506
stimulushiiDD 0.568 0.529 0.533
stimulushud 0.516 0.569 0.471 0.492
stimulushuDD 0.562 0.521 0.527 0.544 0.484
stimulushuud 0.562 0.522 0.528 0.545 0.485
stimulushuuDD 0.579 0.543 0.542 0.560 0.505
stimulushuDD stimulushuud ListgpTA
ListgpTQ
stimulushaaDD
stimulushad
stimulushaDD
stimulushid
stimulushiDD
stimulushiid
stimulushiiDD
stimulushud
stimulushuDD
stimulushuud 0.539
stimulushuuDD 0.554 0.554
So, my question is, can I consider 'stimulus' as a random effect instead
since the model become more sensible from a programming point of view?
m0.1 <- glmer(match ~ Listgp + (1|stimulus) + (1|Listener), data =
PATdata,
family = "binomial") summary(m0.1) Generalized linear mixed model fit by
maximum likelihood (Laplace Approximation) [ glmerMod] Family: binomial (
logit ) Formula: match ~ Listgp + (1 | stimulus) + (1 | Listener) Data:
PATdata
AIC BIC logLik deviance df.resid
5218.3 5253.4 -2604.2 5208.3 8203
Scaled residuals: Min 1Q Median 3Q Max -21.9276 -0.2804 -0.2059 0.2740
9.4275
Random effects: Groups Name Variance Std.Dev. Listener (Intercept) 1.676
1.294
stimulus (Intercept) 4.949 2.225
Number of obs: 8208, groups: Listener, 228; stimulus, 12
Fixed effects: Estimate Std. Error z value Pr(>|z|)
(Intercept) -1.3754 0.6792 -2.025 0.0429 * ListgpTA 0.2284 0.3073 0.743
0.4572
ListgpTQ 0.1432 0.2513 0.570 0.5687
Signif. codes: 0 ?? 0.001 ?? 0.01 ?? 0.05 ?.? 0.1 ? ? 1
Correlation of Fixed Effects: (Intr) LstgTA ListgpTA -0.235
ListgpTQ -0.288 0.636
Thank you,
Shad
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