Create generalized linear regression model
returns
a generalized linear model with additional options specified by one
or more mdl = fitglm(___,Name,Value)Name,Value pair arguments.
For example, you can specify which variables are categorical, the distribution of the response variable, and the link function to use.
Make a logistic binomial model of the probability of smoking as a function of age, weight, and sex, using a two-way interactions model.
Load the hospital dataset array.
load hospital
dsa = hospital;Specify the model using a formula that allows up to two-way interactions between the variables age, weight, and sex. Smoker is the response variable.
modelspec = 'Smoker ~ Age*Weight*Sex - Age:Weight:Sex';Fit a logistic binomial model.
mdl = fitglm(dsa,modelspec,'Distribution','binomial')
mdl =
Generalized linear regression model:
logit(Smoker) ~ 1 + Sex*Age + Sex*Weight + Age*Weight
Distribution = Binomial
Estimated Coefficients:
Estimate SE tStat pValue
___________ _________ ________ _______
(Intercept) -6.0492 19.749 -0.3063 0.75938
Sex_Male -2.2859 12.424 -0.18399 0.85402
Age 0.11691 0.50977 0.22934 0.81861
Weight 0.031109 0.15208 0.20455 0.83792
Sex_Male:Age 0.020734 0.20681 0.10025 0.92014
Sex_Male:Weight 0.01216 0.053168 0.22871 0.8191
Age:Weight -0.00071959 0.0038964 -0.18468 0.85348
100 observations, 93 error degrees of freedom
Dispersion: 1
Chi^2-statistic vs. constant model: 5.07, p-value = 0.535
All of the p-values (under pValue) are large. This means none of the coefficients are significant. The large -value for the test of the model, 0.535, indicates that this model might not differ statistically from a constant model.
Create sample data with 20 predictors, and Poisson response using just three of the predictors, plus a constant.
rng('default') % for reproducibility X = randn(100,7); mu = exp(X(:,[1 3 6])*[.4;.2;.3] + 1); y = poissrnd(mu);
Fit a generalized linear model using the Poisson distribution.
mdl = fitglm(X,y,'linear','Distribution','poisson')
mdl =
Generalized linear regression model:
log(y) ~ 1 + x1 + x2 + x3 + x4 + x5 + x6 + x7
Distribution = Poisson
Estimated Coefficients:
Estimate SE tStat pValue
_________ ________ ________ __________
(Intercept) 0.88723 0.070969 12.502 7.3149e-36
x1 0.44413 0.052337 8.4858 2.1416e-17
x2 0.0083388 0.056527 0.14752 0.88272
x3 0.21518 0.063416 3.3932 0.00069087
x4 -0.058386 0.065503 -0.89135 0.37274
x5 -0.060824 0.073441 -0.8282 0.40756
x6 0.34267 0.056778 6.0352 1.5878e-09
x7 0.04316 0.06146 0.70225 0.48252
100 observations, 92 error degrees of freedom
Dispersion: 1
Chi^2-statistic vs. constant model: 119, p-value = 1.55e-22
The p-values of 2.14e-17, 0.00069, and 1.58e-09 indicate that the coefficients of the variables x1, x3, and x6 are statistically significant.
tbl — Input dataInput data including predictor and response variables, specified as a table or dataset array.
The predictor variables and response variable can be numeric, logical, categorical,
character, or string. The response variable can have a data type other than numeric only
if 'Distribution' is 'binomial'.
By default, fitglm takes the last variable as
the response variable and the others as the predictor variables.
To set a different column as the response variable, use the
ResponseVar name-value pair argument.
To use a subset of the columns as predictors, use the
PredictorVars name-value pair argument.
To define a model specification, set the modelspec
argument using a formula or terms matrix. The formula or terms matrix
specifies which columns to use as the predictor or response
variables.
The variable names in a table do not have to be valid MATLAB® identifiers. However, if the names are not valid, you cannot use a formula when you fit or adjust a model; for example:
You cannot specify modelspec using a formula.
You cannot use a formula to specify the terms to add or remove when you
use the addTerms function or the
removeTerms function,
respectively.
You cannot use a formula to specify the lower and upper bounds of the
model when you use the step or stepwiseglm function with the
name-value pair arguments 'Lower' and
'Upper', respectively.
You can verify the variable names in tbl
by using the isvarname function. If the variable names are
not valid, then you can convert them by using the matlab.lang.makeValidName function.
X — Predictor variablesPredictor variables, specified as an n-by-p matrix,
where n is the number of observations and p is
the number of predictor variables. Each column of X represents
one variable, and each row represents one observation.
By default, there is a constant term in the model, unless you
explicitly remove it, so do not include a column of 1s in X.
Data Types: single | double
y — Response variableResponse variable, specified as a vector or matrix.
If 'Distribution' is not
'binomial', then y must be an
n-by-1 vector, where n is the
number of observations. Each entry in y is the response
for the corresponding row of X. The data type must be
single or double.
If 'Distribution' is 'binomial',
then y can be an n-by-1 vector or
n-by-2 matrix with counts in column 1 and
BinomialSize in column 2.
Data Types: single | double | logical | categorical
modelspec — Model specification'linear' (default) | character vector or string scalar naming the model | t-by-(p + 1) terms matrix | character vector or string scalar formula in the form 'y ~
terms'Model specification, specified as one of these values.
A character vector or string scalar naming the model.
| Value | Model Type |
|---|---|
'constant' | Model contains only a constant (intercept) term. |
'linear' | Model contains an intercept and linear term for each predictor. |
'interactions' | Model contains an intercept, linear term for each predictor, and all products of pairs of distinct predictors (no squared terms). |
'purequadratic' | Model contains an intercept term and linear and squared terms for each predictor. |
'quadratic' | Model contains an intercept term, linear and squared terms for each predictor, and all products of pairs of distinct predictors. |
'poly | Model is a polynomial with all terms up to degree i in the first
predictor, degree j in the second predictor, and so
on. Specify the maximum degree for each predictor by using numerals 0 though 9.
The model contains interaction terms, but the degree of each interaction term
does not exceed the maximum value of the specified degrees. For example,
'poly13' has an intercept and
x1,
x2,
x22,
x23,
x1*x2,
and
x1*x22
terms, where x1 and
x2 are the first and second
predictors, respectively. |
A t-by-(p + 1) matrix, or a Terms Matrix, specifying terms in the model, where t is the number of terms and p is the number of predictor variables, and +1 accounts for the response variable. A terms matrix is convenient when the number of predictors is large and you want to generate the terms programmatically.
A character vector or string scalar Formula in the form
'y ~ terms',
where the terms are in Wilkinson Notation. The variable names in the
formula must be variable names in tbl or variable names
specified by Varnames. Also, the variable names must be valid
MATLAB identifiers.
The software determines the order of terms in a fitted model by using the order of
terms in tbl or X. Therefore, the order of
terms in the model can be different from the order of terms in the specified
formula.
Example: 'quadratic'
Specify optional
comma-separated pairs of Name,Value arguments. Name is
the argument name and Value is the corresponding value.
Name must appear inside quotes. You can specify several name and value
pair arguments in any order as
Name1,Value1,...,NameN,ValueN.
'Distribution','normal','link','probit','Exclude',[23,59] specifies
that the distribution of the response is normal, and instructs fitglm to
use the probit link function and exclude the 23rd and 59th observations
from the fit.'BinomialSize' — Number of trials for binomial distributionNumber of trials for binomial distribution, that is the sample size, specified as the
comma-separated pair consisting of 'BinomialSize' and the
variable name in tbl, a numeric scalar, or a numeric
vector of the same length as the response. This is the parameter
n for the fitted binomial distribution.
BinomialSize applies only when the
Distribution parameter is
'binomial'.
If BinomialSize is a scalar value, that means
all observations have the same number of trials.
As an alternative to BinomialSize, you can specify the response as a
two-column matrix with counts in column 1 and BinomialSize in column
2.
Data Types: single | double | char | string
'B0' — Initial values for coefficient estimatesInitial values for the coefficient estimates, specified as a numeric vector. The default values are initial fitted values derived from the input data.
Data Types: single | double
'CategoricalVars' — Categorical variable listCategorical variable list, specified as the comma-separated pair consisting of
'CategoricalVars' and either a string array or cell array of
character vectors containing categorical variable names in the table or dataset array
tbl, or a logical or numeric index vector indicating which
columns are categorical.
If data is in a table or dataset array tbl, then, by
default, fitglm treats all categorical values, logical
values, character arrays, string arrays, and cell arrays of character vectors as
categorical variables.
If data is in matrix X, then the default value of
'CategoricalVars' is an empty matrix
[]. That is, no variable is categorical unless you
specify it as categorical.
For example, you can specify the second and third variables out of six as categorical using either of the following:
Example: 'CategoricalVars',[2,3]
Example: 'CategoricalVars',logical([0 1 1 0 0 0])
Data Types: single | double | logical | string | cell
'DispersionFlag' — Indicator to compute dispersion parameterfalse for 'binomial' and 'poisson' distributions (default) | trueIndicator to compute dispersion parameter for 'binomial' and 'poisson' distributions,
specified as the comma-separated pair consisting of 'DispersionFlag' and
one of the following.
true | Estimate a dispersion parameter when computing standard errors. The estimated dispersion parameter value is the sum of squared Pearson residuals divided by the degrees of freedom for error (DFE). |
false | Default. Use the theoretical value of 1 when computing standard errors. |
The fitting function always estimates the dispersion for other distributions.
Example: 'DispersionFlag',true
'Distribution' — Distribution of the response variable'normal' (default) | 'binomial' | 'poisson' | 'gamma' | 'inverse gaussian'Distribution of the response variable, specified as the comma-separated
pair consisting of 'Distribution' and one of the
following.
'normal' | Normal distribution |
'binomial' | Binomial distribution |
'poisson' | Poisson distribution |
'gamma' | Gamma distribution |
'inverse gaussian' | Inverse Gaussian distribution |
Example: 'Distribution','gamma'
'Exclude' — Observations to excludeObservations to exclude from the fit, specified as the comma-separated
pair consisting of 'Exclude' and a logical or numeric
index vector indicating which observations to exclude from the fit.
For example, you can exclude observations 2 and 3 out of 6 using either of the following examples.
Example: 'Exclude',[2,3]
Example: 'Exclude',logical([0 1 1 0 0 0])
Data Types: single | double | logical
'Intercept' — Indicator for constant termtrue (default) | falseIndicator for the constant term (intercept) in the fit, specified as the comma-separated pair
consisting of 'Intercept' and either true to
include or false to remove the constant term from the model.
Use 'Intercept' only when specifying the model using a character vector or
string scalar, not a formula or matrix.
Example: 'Intercept',false
'Link' — Link functionLink function to use in place of the canonical link function,
specified as the comma-separated pair consisting of 'Link' and
one of the following.
| Link Function Name | Link Function | Mean (Inverse) Function |
|---|---|---|
'identity' | f(μ) = μ | μ = Xb |
'log' | f(μ) = log(μ) | μ = exp(Xb) |
'logit' | f(μ) = log(μ/(1–μ)) | μ = exp(Xb) / (1 + exp(Xb)) |
'probit' | f(μ) = Φ–1(μ), where Φ is the cumulative distribution function of the standard normal distribution. | μ = Φ(Xb) |
'comploglog' | f(μ) = log(–log(1 – μ)) | μ = 1 – exp(–exp(Xb)) |
'reciprocal' | f(μ) = 1/μ | μ = 1/(Xb) |
p (a number) | f(μ) = μp | μ = Xb1/p |
|
| f(μ) = S.Link(μ) | μ = S.Inverse(Xb) |
The link function defines the relationship f(μ) = X*b between the mean response μ and the linear combination of predictors X*b.
For more information on the canonical link functions, see Canonical Link Function.
Example: 'Link','probit'
Data Types: char | string | single | double | struct
'Options' — Optimization optionsstatset('fitglm') (default) | structureOptimization options, specified as a structure. This argument determines the control
parameters for the iterative algorithm that fitglm
uses.
Create the 'Options' value by using the function statset or by creating a structure array containing the fields and values described in this table.
| Field Name | Value | Default Value |
|---|---|---|
Display | Amount of information displayed by the algorithm
| 'off' |
MaxIter | Maximum number of iterations allowed, specified as a positive integer | 100 |
TolX | Termination tolerance for the parameters, specified as a positive scalar | 1e-6 |
You can also enter statset(' in the
Command Window to see the names and default values of the fields that
fitglm')fitglm accepts in the 'Options'
name-value argument.
Example: 'Options',statset('Display','final','MaxIter',1000) specifies to display the final information of the iterative algorithm results, and change the maximum number of iterations allowed to 1000.
Data Types: struct
'Offset' — Offset variableOffset variable in the fit, specified as the comma-separated pair consisting of
'Offset' and the variable name in
tbl or a numeric vector with the same length as
the response.
fitglm uses Offset as an additional predictor
with a coefficient value fixed at 1. In other words, the formula for fitting is
f(μ) =
Offset +
X*b,
where f is the link function,
μ is the mean response, and
X*b is the linear combination
of predictors X. The Offset predictor
has coefficient 1.
For example, consider a Poisson regression model. Suppose the
number of counts is known for theoretical reasons to be proportional
to a predictor A. By using the log link function
and by specifying log(A) as an offset, you can
force the model to satisfy this theoretical constraint.
Data Types: single | double | char | string
'PredictorVars' — Predictor variablesPredictor variables to use in the fit, specified as the comma-separated pair consisting of
'PredictorVars' and either a string array or cell array of
character vectors of the variable names in the table or dataset array
tbl, or a logical or numeric index vector indicating which
columns are predictor variables.
The string values or character vectors should be among the names in tbl, or
the names you specify using the 'VarNames' name-value pair
argument.
The default is all variables in X, or all
variables in tbl except for ResponseVar.
For example, you can specify the second and third variables as the predictor variables using either of the following examples.
Example: 'PredictorVars',[2,3]
Example: 'PredictorVars',logical([0 1 1 0 0 0])
Data Types: single | double | logical | string | cell
'ResponseVar' — Response variabletbl (default) | character vector or string scalar containing variable name | logical or numeric index vectorResponse variable to use in the fit, specified as the comma-separated pair consisting of
'ResponseVar' and either a character vector or string scalar
containing the variable name in the table or dataset array tbl, or a
logical or numeric index vector indicating which column is the response variable. You
typically need to use 'ResponseVar' when fitting a table or dataset
array tbl.
For example, you can specify the fourth variable, say yield,
as the response out of six variables, in one of the following ways.
Example: 'ResponseVar','yield'
Example: 'ResponseVar',[4]
Example: 'ResponseVar',logical([0 0 0 1 0 0])
Data Types: single | double | logical | char | string
'VarNames' — Names of variables{'x1','x2',...,'xn','y'} (default) | string array | cell array of character vectorsNames of variables, specified as the comma-separated pair consisting of
'VarNames' and a string array or cell array of character vectors
including the names for the columns of X first, and the name for the
response variable y last.
'VarNames' is not applicable to variables in a table or dataset
array, because those variables already have names.
The variable names do not have to be valid MATLAB identifiers. However, if the names are not valid, you cannot use a formula when you fit or adjust a model; for example:
You cannot use a formula to specify the terms to add or remove when you
use the addTerms function or the
removeTerms function,
respectively.
You cannot use a formula to specify the lower and upper bounds of the
model when you use the step or stepwiseglm function with the
name-value pair arguments 'Lower' and
'Upper', respectively.
Before specifying 'VarNames',varNames, you can verify the variable
names in varNames by using the isvarname function. If the variable names are not valid, then you can
convert them by using the matlab.lang.makeValidName
function.
Example: 'VarNames',{'Horsepower','Acceleration','Model_Year','MPG'}
Data Types: string | cell
'Weights' — Observation weightsones(n,1) (default) | n-by-1 vector of nonnegative scalar valuesObservation weights, specified as the comma-separated pair consisting
of 'Weights' and an n-by-1 vector
of nonnegative scalar values, where n is the number
of observations.
Data Types: single | double
mdl — Generalized linear regression modelGeneralizedLinearModel objectGeneralized linear regression model, specified as a GeneralizedLinearModel object
created using fitglm or stepwiseglm.
A terms matrix T is a
t-by-(p + 1) matrix specifying terms in a model,
where t is the number of terms, p is the number of
predictor variables, and +1 accounts for the response variable. The value of
T(i,j) is the exponent of variable j in term
i.
For example, suppose that an input includes three predictor variables x1,
x2, and x3 and the response variable
y in the order x1, x2,
x3, and y. Each row of T
represents one term:
[0 0 0 0] — Constant term or intercept
[0 1 0 0] — x2; equivalently,
x1^0 * x2^1 * x3^0
[1 0 1 0] — x1*x3
[2 0 0 0] — x1^2
[0 1 2 0] — x2*(x3^2)
The 0 at the end of each term represents the response variable. In
general, a column vector of zeros in a terms matrix represents the position of the response
variable. If you have the predictor and response variables in a matrix and column vector,
then you must include 0 for the response variable in the last column of
each row.
A formula for model specification is a character vector or string scalar of
the form '.y ~
terms'
y is the response name.
terms represents the predictor terms in a model using
Wilkinson notation.
To represent predictor and response variables, use the variable names of the table
input tbl or the variable names specified by using
VarNames. The default value of
VarNames is
{'x1','x2',...,'xn','y'}.
For example:
'y ~ x1 + x2 + x3' specifies a
three-variable linear model with intercept.
'y ~ x1 + x2 + x3 – 1' specifies a
three-variable linear model without intercept. Note that
formulas include a constant (intercept) term by default. To
exclude a constant term from the model, you must include
–1 in the formula.
A formula includes a constant term unless you explicitly remove the term using
–1.
Wilkinson notation describes the terms present in a model. The notation relates to the terms present in a model, not to the multipliers (coefficients) of those terms.
Wilkinson notation uses these symbols:
+ means include the next variable.
– means do not include the next variable.
: defines an interaction, which is a product of
terms.
* defines an interaction and all lower-order terms.
^ raises the predictor to a power, exactly as in
* repeated, so ^ includes lower-order
terms as well.
() groups terms.
This table shows typical examples of Wilkinson notation.
| Wilkinson Notation | Terms in Standard Notation |
|---|---|
1 | Constant (intercept) term |
x1^k, where k is a positive
integer | x1,
x12, ...,
x1k |
x1 + x2 | x1, x2 |
x1*x2 | x1, x2,
x1*x2 |
x1:x2 | x1*x2 only |
–x2 | Do not include x2 |
x1*x2 + x3 | x1, x2, x3,
x1*x2 |
x1 + x2 + x3 + x1:x2 | x1, x2, x3,
x1*x2 |
x1*x2*x3 – x1:x2:x3 | x1, x2, x3,
x1*x2, x1*x3,
x2*x3 |
x1*(x2 + x3) | x1, x2, x3,
x1*x2, x1*x3 |
For more details, see Wilkinson Notation.
The default link function for a generalized linear model is the canonical link function.
| Distribution | Canonical Link Function Name | Link Function | Mean (Inverse) Function |
|---|---|---|---|
'normal' | 'identity' | f(μ) = μ | μ = Xb |
'binomial' | 'logit' | f(μ) = log(μ/(1 – μ)) | μ = exp(Xb) / (1 + exp(Xb)) |
'poisson' | 'log' | f(μ) = log(μ) | μ = exp(Xb) |
'gamma' | -1 | f(μ) = 1/μ | μ = 1/(Xb) |
'inverse gaussian' | -2 | f(μ) = 1/μ2 | μ = (Xb)–1/2 |
The generalized linear model mdl is
a standard linear model unless you specify otherwise with the Distribution name-value
pair.
For methods such as plotResiduals or devianceTest,
or properties of the GeneralizedLinearModel object,
see GeneralizedLinearModel.
After training a model, you can generate C/C++ code that predicts responses for new data. Generating C/C++ code requires MATLAB Coder™. For details, see Introduction to Code Generation.
fitglm treats a categorical predictor as follows:
A model with a categorical predictor that has L levels
(categories) includes L – 1 indicator variables. The model uses the first category as a
reference level, so it does not include the indicator variable for the reference
level. If the data type of the categorical predictor is
categorical, then you can check the order of categories
by using categories and reorder the
categories by using reordercats to customize the
reference level. For more details about creating indicator variables, see Automatic Creation of Dummy Variables.
fitglm treats the group of L – 1 indicator variables as a single variable. If you want to treat
the indicator variables as distinct predictor variables, create indicator
variables manually by using dummyvar. Then use the
indicator variables, except the one corresponding to the reference level of the
categorical variable, when you fit a model. For the categorical predictor
X, if you specify all columns of
dummyvar(X) and an intercept term as predictors, then the
design matrix becomes rank deficient.
Interaction terms between a continuous predictor and a categorical predictor with L levels consist of the element-wise product of the L – 1 indicator variables with the continuous predictor.
Interaction terms between two categorical predictors with L and M levels consist of the (L – 1)*(M – 1) indicator variables to include all possible combinations of the two categorical predictor levels.
You cannot specify higher-order terms for a categorical predictor because the square of an indicator is equal to itself.
fitglm considers
NaN, '' (empty character vector),
"" (empty string), <missing>, and
<undefined> values in tbl,
X, and Y to be missing values.
fitglm does not use observations with missing values in the fit.
The ObservationInfo property of a fitted model indicates whether or not
fitglm uses each observation in the fit.
Use stepwiseglm to select a model specification automatically. Use
step, addTerms, or removeTerms to adjust a fitted model.
[1] Collett, D. Modeling Binary Data. New York: Chapman & Hall, 2002.
[2] Dobson, A. J. An Introduction to Generalized Linear Models. New York: Chapman & Hall, 1990.
[3] McCullagh, P., and J. A. Nelder. Generalized Linear Models. New York: Chapman & Hall, 1990.
This function supports tall arrays for out-of-memory data with some limitations.
If any input argument to fitglm is
a tall array, then all of the other inputs must be tall arrays as
well. This includes nonempty variables supplied with the 'Weights', 'Exclude', 'Offset',
and 'BinomialSize' name-value pairs.
The default number of iterations is 5. You can change
the number of iterations using the 'Options' name-value
pair to pass in an options structure. Create an options structure
using statset to specify a different value for MaxIter.
For tall data, fitglm returns
a CompactGeneralizedLinearModel object that contains
most of the same properties as a GeneralizedLinearModel object.
The main difference is that the compact object is sensitive to memory
requirements. The compact object does not include properties that
include the data, or that include an array of the same size as the
data. The compact object does not contain these GeneralizedLinearModel properties:
Diagnostics
Fitted
Offset
ObservationInfo
ObservationNames
Residuals
Steps
Variables
You can compute the residuals directly from the compact
object returned by GLM = fitglm(X,Y) using
RES = Y - predict(GLM,X); S = sqrt(GLM.SSE/GLM.DFE); histogram(RES,linspace(-3*S,3*S,51))
For more information, see Tall Arrays for Out-of-Memory Data.
This function fully supports GPU arrays. For more information, see Run MATLAB Functions on a GPU (Parallel Computing Toolbox).
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