LINEAR_REG
Executes linear regression on an input relation, and returns a linear regression model.
You can export the resulting linear regression model in VERTICA_MODELS or PMML format to apply it on data outside Vertica. You can also train a linear regression model elsewhere, then import it to Vertica in PMML format to model on data inside Vertica.
This is a meta-function. You must call meta-functions in a top-level SELECT statement.
Behavior type
VolatileSyntax
LINEAR_REG ( 'model-name', 'input-relation', 'response-column', 'predictor-columns'
[ USING PARAMETERS
[exclude_columns = 'excluded-columns']
[, optimizer = 'optimizer-method']
[, regularization = 'regularization-method']
[, epsilon = epsilon-value]
[, max_iterations = iterations]
[, lambda = lamda-value]
[, alpha = alpha-value]
[, fit_intercept = boolean-value] ] )
Arguments
model-name- Identifies the model to create, where
model-nameconforms to conventions described in Identifiers. It must also be unique among all names of sequences, tables, projections, views, and models within the same schema. input-relation- Table or view that contains the training data for building the model. If the input relation is defined in Hive, use
SYNC_WITH_HCATALOG_SCHEMAto sync thehcatalogschema, and then run the machine learning function. response-column- Name of the input column that represents the dependent variable or outcome. All values in this column must be numeric, otherwise the model is invalid.
predictor-columnsComma-separated list of columns in the input relation that represent independent variables for the model, or asterisk (*) to select all columns. If you select all columns, the argument list for parameter
exclude_columnsmust includeresponse-column, and any columns that are invalid as predictor columns.All predictor columns must be of type numeric or BOOLEAN; otherwise the model is invalid.
Note
All BOOLEAN predictor values are converted to FLOAT values before training: 0 for false, 1 for true. No type checking occurs during prediction, so you can use a BOOLEAN predictor column in training, and during prediction provide a FLOAT column of the same name. In this case, all FLOAT values must be either 0 or 1.
Parameters
exclude_columns- Comma-separated list of columns from
predictor-columnsto exclude from processing. optimizer- Optimizer method used to train the model, one of the following:
-
Important
If you selectCGD,regularization-methodmust be set toL1orENet, otherwise the function returns an error.
Default:
CGDifregularization-methodis set toL1orENet, otherwiseNewton. regularization- Method of regularization, one of the following:
-
None(default) -
L1 -
L2 -
ENet
-
epsilonFLOAT in the range (0.0, 1.0), the error value at which to stop training. Training stops if either the difference between the actual and predicted values is less than or equal to
epsilonor if the number of iterations exceedsmax_iterations.Default: 1e-6
max_iterationsINTEGER in the range (0, 1000000), the maximum number of training iterations. Training stops if either the number of iterations exceeds
max_iterationsor if the difference between the actual and predicted values is less than or equal toepsilon.Default: 100
lambda- Integer ≥ 0, specifies the value of the
regularizationparameter.Default: 1
alpha- Integer ≥ 0, specifies the value of the ENET
regularizationparameter, which defines how much L1 versus L2 regularization to provide. A value of 1 is equivalent to L1 and a value of 0 is equivalent to L2.Value range: [0,1]
Default: 0.5
fit_intercept- Boolean, specifies whether the model includes an intercept. By setting to false, no intercept will be used in training the model. Note that setting
fit_interceptto false does not work well with the BFGS optimizer.Default: True
Model attributes
data- The data for the function, including:
-
coeffNames: Name of the coefficients. This starts with intercept and then follows with the names of the predictors in the same order specified in the call. -
coeff: Vector of estimated coefficients, with the same order ascoeffNames -
stdErr: Vector of the standard error of the coefficients, with the same order ascoeffNames -
zValue(for logistic regression): Vector of z-values of the coefficients, in the same order ascoeffNames -
tValue(for linear regression): Vector of t-values of the coefficients, in the same order ascoeffNames -
pValue: Vector of p-values of the coefficients, in the same order ascoeffNames
-
regularization- Type of regularization to use when training the model.
lambda- Regularization parameter. Higher values enforce stronger regularization. This value must be nonnegative.
alpha- Elastic net mixture parameter.
iterations- Number of iterations that actually occur for the convergence before exceeding
max_iterations. skippedRows- Number of rows of the input relation that were skipped because they contained an invalid value.
processedRows- Total number of input relation rows minus
skippedRows. callStr- Value of all input arguments specified when the function was called.
Examples
=> SELECT LINEAR_REG('myLinearRegModel', 'faithful', 'eruptions', 'waiting'
USING PARAMETERS optimizer='BFGS', fit_intercept=true);
LINEAR_REG
----------------------------
Finished in 10 iterations
(1 row)