DESMAT (Design and Simulation of Materials) is a software tool that allows users to design and simulate materials in order to predict their properties and behavior. One of the key features of DESMAT is its ability to generate saturated models, which are models that accurately represent the behavior of materials under extreme conditions. To use DESMAT to generate a saturated model, users must input the desired material properties and conditions into the software. The program then utilizes advanced algorithms and simulation techniques to generate a model that accurately represents the material’s behavior at saturation. This allows for a more accurate and efficient analysis of materials, which can be beneficial in various industries such as aerospace, automotive, and construction. Overall, DESMAT offers a powerful solution for generating saturated models and can greatly enhance the understanding and design of materials.
How to generate a saturated model using DESMAT? | Stata FAQ
Sometimes, we need to generate a saturated model. In Stata, this can be done
easily using the program desmat, written by John Hendrickx. The command needs to be downloaded before we use it and can be
obtained
by typing search dm73_3 in the command line (see How can I use the search command to search for
programs and get additional help? for more information about using search).
Here is an example using a data set on belief in afterlife
from An Introduction To Categorical Analysis by Argresti. There are
three categorical variables in the data set.
use https://stats.idre.ucla.edu/stat/stata/faq/afterlife, clear list race gender belief count 1. 1 1 1 371 2. 1 1 2 49 3. 1 1 3 74 4. 1 0 1 250 5. 1 0 2 45 6. 1 0 3 71 7. 0 1 1 64 8. 0 1 2 9 9. 0 1 3 15 10. 0 0 1 25 11. 0 0 2 5 12. 0 0 3 13
To generate a saturated model, we can simply do the following. The three
predictors grouped with “*” indicate that we want all the main effects,
2-way interactions and the 3-way interaction.
desmat: poisson count race*gender*belief
-------------------------------------------------------------------------------
poisson
-------------------------------------------------------------------------------
Dependent variable count
Number of observations: 12
Initial log likelihood: -665.927
Log likelihood: -33.156
LR chi square: 1265.541
Model degrees of freedom: 11
Pseudo R-squared: 0.950
Prob: 0.000
-------------------------------------------------------------------------------
nr Effect Coeff s.e.
-------------------------------------------------------------------------------
count
race
1 1 2.303** 0.210
gender
2 1 0.940** 0.236
race.gender
3 1.1 -0.545* 0.250
belief
4 2 -1.609** 0.490
5 3 -0.654 0.342
race.belief
6 1.2 -0.105 0.516
7 1.3 -0.605 0.367
gender.belief
8 1.2 -0.352 0.606
9 1.3 -0.797 0.446
race.gender.belief
10 1.1.2 0.043 0.645
11 1.1.3 0.444 0.483
12 _cons 3.219** 0.200
-------------------------------------------------------------------------------
* p < .05
** p < .01A set of dummy variables are generated by the program, and they are named
as _x_1, _x_2, etc. To see what they are parameterized for, we can type
showtrms
Desmat generated the following design matrix:
nr Variables Term Parameterization
First Last
1 _x_1 race ind(0)
2 _x_2 gender ind(0)
3 _x_3 race.gender ind(0).ind(0)
4 _x_4 _x_5 belief ind(1)
5 _x_6 _x_7 race.belief ind(0).ind(1)
6 _x_8 _x_9 gender.belief ind(0).ind(1)
7 _x_10 _x_11 race.gender.belief ind(0).ind(0).ind(1)There are a few options for desmat. For example, we can use desrep
to display the full result of a model.
desmat: poisson count race*gender*belief, desrep(exp all)
-------------------------------------------------------------------------------
poisson
-------------------------------------------------------------------------------
Dependent variable count
Number of observations: 12
Initial log likelihood: -665.927
Log likelihood: -33.156
LR chi square: 1265.541
Model degrees of freedom: 11
Pseudo R-squared: 0.950
Prob: 0.000
-------------------------------------------------------------------------------
nr Effect Coeff s.e. z prob lo 95% hi 95%
(exponential parameters)
-------------------------------------------------------------------------------
count
race
1 1 10.000** 2.098 10.977 0.000 6.629 15.085
gender
2 1 2.560** 0.604 3.986 0.000 1.612 4.064
race.gender
3 1.1 0.580* 0.145 -2.184 0.029 0.355 0.946
belief
4 2 0.200** 0.098 -3.285 0.001 0.077 0.522
5 3 0.520 0.178 -1.912 0.056 0.266 1.016
race.belief
6 1.2 0.900 0.464 -0.204 0.838 0.327 2.474
7 1.3 0.546 0.201 -1.646 0.100 0.266 1.122
gender.belief
8 1.2 0.703 0.426 -0.582 0.561 0.215 2.304
9 1.3 0.451 0.201 -1.785 0.074 0.188 1.081
race.gender.belief
10 1.1.2 1.044 0.673 0.066 0.947 0.295 3.695
11 1.1.3 1.558 0.753 0.918 0.359 0.604 4.017
12 _cons 25.000** 5.000 16.094 0.000 16.893 36.998
-------------------------------------------------------------------------------
* p < .05
** p < .01One thing that one often wants to do after running a saturated model is to
compare it with other models. We can issue the command lrtest to save the
likelihood ratio for the saturated model after the saturated model is created.
Then we run other smaller models and do the lrtest again using the saved
information to compare models.
lrtest, saving(m0)
desmat: poisson count race belief*gender, desrep(exp all)
-------------------------------------------------------------------------------
poisson
-------------------------------------------------------------------------------
Dependent variable count
Number of observations: 12
Initial log likelihood: -665.927
Log likelihood: -36.852
LR chi square: 1258.149
Model degrees of freedom: 6
Pseudo R-squared: 0.945
Prob: 0.000
-------------------------------------------------------------------------------
nr Effect Coeff s.e. z prob lo 95% hi 95%
(exponential parameters)
-------------------------------------------------------------------------------
count
race
1 1 6.565** 0.616 20.063 0.000 5.463 7.890
belief
2 2 0.182** 0.028 -11.088 0.000 0.135 0.246
3 3 0.305** 0.038 -9.513 0.000 0.239 0.390
gender
4 1 1.582** 0.122 5.952 0.000 1.360 1.840
belief.gender
5 2.1 0.733 0.152 -1.493 0.136 0.488 1.102
6 3.1 0.670* 0.114 -2.350 0.019 0.480 0.936
7 _cons 36.352** 3.682 35.473 0.000 29.806 44.336
-------------------------------------------------------------------------------
* p < .05
** p < .01
lrtest, using(m0)
Poisson: likelihood-ratio test chi2(5) = 7.39
Prob > chi2 = 0.1931Another command that comes with desmat is destest. It performs
a Wald test on model terms after a model has been created.
destest Testing all model terms ... ------------------------------------------------------------------------------- Term Wald chi2 df P > chi2 ------------------------------------------------------------------------------- race 402.544** 1 0.000 belief 179.902** 2 0.000 gender 35.431** 1 0.000 belief.gender 6.766* 2 0.034 ------------------------------------------------------------------------------- * p < .05 ** p < .01
For more information, please do help desmat or visit the webpage on
DESMAT for
Stata.
Cite this article
stats writer (2024). How can I use DESMAT to generate a saturated model?. PSYCHOLOGICAL SCALES. Retrieved from https://scales.arabpsychology.com/stats/how-can-i-use-desmat-to-generate-a-saturated-model/
stats writer. "How can I use DESMAT to generate a saturated model?." PSYCHOLOGICAL SCALES, 1 Jul. 2024, https://scales.arabpsychology.com/stats/how-can-i-use-desmat-to-generate-a-saturated-model/.
stats writer. "How can I use DESMAT to generate a saturated model?." PSYCHOLOGICAL SCALES, 2024. https://scales.arabpsychology.com/stats/how-can-i-use-desmat-to-generate-a-saturated-model/.
stats writer (2024) 'How can I use DESMAT to generate a saturated model?', PSYCHOLOGICAL SCALES. Available at: https://scales.arabpsychology.com/stats/how-can-i-use-desmat-to-generate-a-saturated-model/.
[1] stats writer, "How can I use DESMAT to generate a saturated model?," PSYCHOLOGICAL SCALES, vol. X, no. Y, ص Z-Z, July, 2024.
stats writer. How can I use DESMAT to generate a saturated model?. PSYCHOLOGICAL SCALES. 2024;vol(issue):pages.
