Stochastic Gradient Descent

Minimize an objective function using a stochastic approximation of gradient descent.

Inputs

  • Data: input dataset
  • Preprocessor: preprocessing method(s)

Outputs

  • Learner: stochastic gradient descent learning algorithm
  • Model: trained model

The Stochastic Gradient Descent widget uses stochastic gradient descent that minimizes a chosen loss function with a linear function. The algorithm approximates a true gradient by considering one sample at a time, and simultaneously updates the model based on the gradient of the loss function. For regression, it returns predictors as minimizers of the sum, i.e. M-estimators, and is especially useful for large-scale and sparse datasets.

  1. Specify the name of the model. The default name is “SGD”.

  2. Algorithm parameters:

    • Classification loss function:
      • Hinge (linear SVM)
      • Logistic Regression (logistic regression SGD)
      • Modified Huber (smooth loss that brings tolerance to outliers as well as probability estimates)
      • Squared Hinge (quadratically penalized hinge)
      • Perceptron (linear loss used by the perceptron algorithm)
      • Squared Loss (fitted to ordinary least-squares)
      • Huber (switches to linear loss beyond ε)
      • Epsilon insensitive (ignores errors within ε, linear beyond it)
      • Squared epsilon insensitive (loss is squared beyond ε-region).
    • Regression loss function:
      • Squared Loss (fitted to ordinary least-squares)
      • Huber (switches to linear loss beyond ε)
      • Epsilon insensitive (ignores errors within ε, linear beyond it)
      • Squared epsilon insensitive (loss is squared beyond ε-region).
  3. Regularization norms to prevent overfitting:

    Regularization strength defines how much regularization will be applied (the less we regularize, the more we allow the model to fit the data) and the mixing parameter what the ratio between L1 and L2 loss will be (if set to 0 then the loss is L2, if set to 1 then it is L1).

  4. Learning parameters.

    • Learning rate:
      • Constant: learning rate stays the same through all epochs (passes)
      • Optimal: a heuristic proposed by Leon Bottou
      • Inverse scaling: earning rate is inversely related to the number of iterations
    • Initial learning rate.
    • Inverse scaling exponent: learning rate decay.
    • Number of iterations: the number of passes through the training data.
    • If Shuffle data after each iteration is on, the order of data instances is mixed after each pass.
    • If Fixed seed for random shuffling is on, the algorithm will use a fixed random seed and enable replicating the results.
  5. Produce a report.

  6. Press Apply to commit changes. Alternatively, tick the box on the left side of the Apply button and changes will be communicated automatically.

Preprocessing

SGD uses default preprocessing when no other preprocessors are given. It executes them in the following order:

  • removes instances with unknown target values
  • continuizes categorical variables (with one-hot-encoding)
  • removes empty columns
  • imputes missing values with mean values
  • normalizes the data by centering to mean and scaling to standard deviation of 1

To remove default preprocessing, connect an empty Preprocess widget to the learner.

Feature Scoring

Stochastic Gradient Descent can be used with Rank for feature scoring. See Learners as Scorers for an example.

Examples

For the classification task, we will use iris dataset and test two models on it. We connected Stochastic Gradient Descent and Tree to Test & Score. We also connected File to Test & Score and observed model performance in the widget.

For the regression task, we will compare three different models to see which predict what kind of results. For the purpose of this example, the housing dataset is used. We connect the File widget to Stochastic Gradient Descent, Linear Regression and kNN widget and all four to the Predictions widget.