stochasticLinearRegression
This function implements stochastic linear regression. It supports custom parameters for learning rate, L2 regularization coefficient, mini-batch size, and has a few methods for updating weights (Adam (used by default), simple SGD, Momentum, and Nesterov).
Parameters
There are 4 customizable parameters. They are passed to the function sequentially, but there is no need to pass all four - default values will be used, however good model required some parameter tuning.
stochasticLinearRegression(0.00001, 0.1, 15, 'Adam')
learning rate
is the coefficient on step length, when the gradient descent step is performed. A learning rate that is too big may cause infinite weights of the model. Default is0.00001
.l2 regularization coefficient
which may help to prevent overfitting. Default is0.1
.mini-batch size
sets the number of elements, which gradients will be computed and summed to perform one step of gradient descent. Pure stochastic descent uses one element, however, having small batches (about 10 elements) makes gradient steps more stable. Default is15
.method for updating weights
, they are:Adam
(by default),SGD
,Momentum
, andNesterov
.Momentum
andNesterov
require a little bit more computations and memory, however, they happen to be useful in terms of speed of convergence and stability of stochastic gradient methods.
Usage
stochasticLinearRegression
is used in two steps: fitting the model and predicting on new data. In order to fit the model and save its state for later usage, we use the -State
combinator, which saves the state (e.g. model weights).
To predict, we use the function evalMLMethod, which takes a state as an argument as well as features to predict on.
1. Fitting
Such query may be used.
CREATE TABLE IF NOT EXISTS train_data
(
param1 Float64,
param2 Float64,
target Float64
) ENGINE = Memory;
CREATE TABLE your_model ENGINE = Memory AS SELECT
stochasticLinearRegressionState(0.1, 0.0, 5, 'SGD')(target, param1, param2)
AS state FROM train_data;
Here, we also need to insert data into the train_data
table. The number of parameters is not fixed, it depends only on the number of arguments passed into linearRegressionState
. They all must be numeric values.
Note that the column with target value (which we would like to learn to predict) is inserted as the first argument.
2. Predicting
After saving a state into the table, we may use it multiple times for prediction or even merge with other states and create new, even better models.
WITH (SELECT state FROM your_model) AS model SELECT
evalMLMethod(model, param1, param2) FROM test_data
The query will return a column of predicted values. Note that first argument of evalMLMethod
is AggregateFunctionState
object, next are columns of features.
test_data
is a table like train_data
but may not contain target value.
Notes
To merge two models user may create such query:
sql SELECT state1 + state2 FROM your_models
whereyour_models
table contains both models. This query will return newAggregateFunctionState
object.User may fetch weights of the created model for its own purposes without saving the model if no
-State
combinator is used.sql SELECT stochasticLinearRegression(0.01)(target, param1, param2) FROM train_data
Such query will fit the model and return its weights - first are weights, which correspond to the parameters of the model, the last one is bias. So in the example above the query will return a column with 3 values.
See Also