LinearSvc / Classifier Layer

Linear Support Vector Classification - Similar to SVC with parameter kernel='linear', but implemented in terms of liblinear rather than libsvm, so it has more flexibility in the choice of penalties and loss functions and should scale better to large numbers of samples. Fast implementation for large-scale applications.

Mathematical form: Optimization: where:

  • is the weight vector
  • is the bias term
  • is the loss function
  • is the regularization parameter

Key characteristics:

  • Linear decision boundaries
  • Efficient large-scale learning
  • Multiple loss functions
  • L1/L2 regularization
  • Sparse solution support

Common applications:

  • Text classification
  • High-dimensional data
  • Large datasets
  • Real-time applications
  • Feature selection

Advantages over SVC:

  • Better scaling with samples
  • More flexible penalties
  • Lower memory usage
  • Faster training

Outputs:

  1. Predicted Table: Input data with predictions
  2. Validation Results: Cross-validation metrics
  3. Test Metric: Test set performance
  4. ROC Curve Data: ROC analysis information
  5. Confusion Matrix: Classification breakdown
  6. Feature Importances: Feature coefficients

Note: Optimized for linear classification tasks with many samples

Table
0
0
Predicted Table
1
Validation Results
2
Test Metric
3
ROC Curve Data
4
Confusion Matrix
5
Feature Importances

SelectFeatures

[column, ...]

Feature columns for Linear SVC:

Data requirements:

  1. Preprocessing:

    • Numerical features
    • Standardized values
    • No missing data
    • Finite numbers
  2. Scaling importance:

    • StandardScaler preferred
    • Uniform feature ranges
    • Improved convergence
    • Better performance
  3. Feature engineering:

    • Polynomial features
    • Interaction terms
    • Domain-specific transforms
    • Sparse representations

Note: If empty, uses all numeric columns except target

Target column for classification:

Requirements:

  1. Data format:

    • Categorical labels
    • No missing values
    • Proper encoding
    • Distinct classes
  2. Class properties:

    • At least two classes
    • Balanced preferred
    • Clear separation
    • Meaningful categories
  3. Preprocessing:

    • Label encoding
    • Class weights consideration
    • Distribution analysis
    • Stratification needs

Params

oneof
DefaultParams

Optimized default configuration for Linear SVC:

Default settings:

  1. Model structure:

    • L2 penalty (standard regularization)
    • Squared hinge loss (smooth optimization)
    • One-vs-rest multi-class
  2. Training parameters:

    • C = 1.0 (balanced regularization)
    • tol = 0.0001 (convergence tolerance)
    • max_iter = 1000 (iteration limit)
  3. Model features:

    • fit_intercept = true (bias term)
    • intercept_scaling = 1 (standard scaling)
    • class_weight = none (equal weights)

Best suited for:

  • Large-scale applications
  • Linear classification
  • High-dimensional data
  • Production environments

Note: Provides efficient baseline for linear classification tasks

Fine-tuned configuration for Linear SVC:

Parameter categories:

  1. Optimization control:

    • Penalty type
    • Loss function
    • Regularization strength
  2. Model architecture:

    • Multi-class strategy
    • Intercept fitting
    • Class weighting
  3. Training dynamics:

    • Convergence criteria
    • Iteration limits
    • Numerical precision

Note: Parameter interactions affect model performance and training efficiency

L2

Regularization norm for weight vector:

Mathematical form:

  • L1:
  • L2:

Trade-offs:

  • Feature selection vs stability
  • Sparsity vs smoothness
  • Memory vs computation
  • Solution uniqueness
L1 ~

L1 norm regularization (Lasso):

Properties:

  • Produces sparse solutions
  • Built-in feature selection
  • Robust to outliers
  • Non-smooth optimization

Best for:

  • Feature selection needs
  • High-dimensional data
  • Redundant features
  • Memory constraints

Note: Not compatible with 'hinge' loss

L2 ~

L2 norm regularization (Ridge):

Properties:

  • Smooth solutions
  • Stable optimization
  • All features used
  • Unique solution

Best for:

  • General purpose use
  • Correlated features
  • Numerical stability
  • Default choice

Note: Standard SVM regularization

Loss

enum
SquaredHinge

Loss function for optimization:

Role:

  • Measures prediction error
  • Defines optimization objective
  • Influences model behavior
  • Affects computational efficiency

Selection impact:

  • Training speed
  • Solution properties
  • Model robustness
  • Optimization stability
Hinge ~

Standard SVM hinge loss:

Properties:

  • Maximum margin classifier
  • Sparse in dual space
  • Non-smooth function
  • Original SVM loss

Best for:

  • Standard SVM behavior
  • Margin maximization
  • L2 regularization

Note: Not compatible with L1 penalty

SquaredHinge ~

Squared hinge loss:

Properties:

  • Smooth function
  • Stronger penalties
  • Differentiable
  • Faster optimization

Best for:

  • Faster convergence
  • Numerical stability
  • General use
  • Both L1/L2 penalties

Tol

f64
0.001

Optimization tolerance threshold:

Purpose:

  • Controls convergence
  • Affects precision
  • Influences training time

Typical ranges:

  • Strict: 1e-4 to 1e-3
  • Standard: 1e-3
  • Relaxed: 1e-3 to 1e-2

Trade-off: Precision vs speed

Regularization strength (inverse):

Effect:

Ranges:

  • Strong reg.: 0.1 - 1.0
  • Balanced: 1.0 - 10.0
  • Weak reg.: 10.0 - 100.0

Impact:

  • Model complexity
  • Generalization
  • Overfitting control
Ovr

Determines the multi-class strategy if y contains more than two classes.

Purpose:

  • Extends binary classification
  • Handles multiple classes
  • Defines decision boundaries
  • Structures model architecture

Trade-offs:

  • Computational efficiency
  • Memory requirements
  • Model complexity
  • Prediction accuracy
Ovr ~

One-vs-Rest strategy (One-vs-All):

Implementation:

  • n_classes binary classifiers
  • Each class vs all others
  • Independent optimizations
  • Parallel training possible

Advantages:

  • Computationally efficient
  • Linear memory scaling
  • Easy interpretation
  • Well-proven approach

Best for:

  • Large-scale problems
  • Many classes
  • Production systems
  • Default choice
CrammerSinger ~

Crammer-Singer multi-class optimization:

Properties:

  • Joint optimization
  • Consistent formulation
  • Direct multi-class approach
  • Theoretically motivated

Trade-offs:

  • Computationally intensive
  • Higher memory usage
  • Complex optimization
  • Rarely better accuracy

Best for:

  • Research purposes
  • Small datasets
  • Theoretical studies
  • Special cases
true

Whether or not to fit an intercept. If set to True, the feature vector is extended to include an intercept term: [x_1, ..., x_n, 1], where 1 corresponds to the intercept. If set to False, no intercept will be used in calculations (i.e. data is expected to be already centered).

Purpose:

  • Adds constant feature
  • Shifts decision boundary
  • Improves flexibility

Impact:

  • Model capacity
  • Training stability
  • Solution quality

Default: Enabled for better fit

Synthetic feature scaling:

Effect:

  • Scales intercept term
  • Controls bias impact
  • Affects regularization

Usage:

  • Higher: Reduce reg. on bias
  • Lower: Stronger reg. on bias
  • Default: Balanced (1.0)

Note: Only used when fit_intercept=true

None

Class importance weighting schemes:

Purpose:

  • Handles class imbalance
  • Adjusts error penalties
  • Controls class importance
  • Influences optimization

Impact:

  • Training behavior
  • Decision boundaries
  • Prediction bias
  • Model sensitivity
None ~

Equal class weights:

Properties:

  • All classes weighted equally
  • Natural class distribution
  • Standard optimization
  • No bias adjustment

Best for:

  • Balanced datasets
  • Equal error costs
  • Default scenarios
  • When prior unknown
Balanced ~

Inverse frequency weighting:

Formula:

Properties:

  • Automatic adjustment
  • Inverse class frequency
  • Balanced errors
  • Compensates imbalance

Best for:

  • Imbalanced classes
  • Minority class focus
  • Skewed distributions
  • Fair classification

Controls the pseudo random number generation for shuffling the data for the dual coordinate descent (if dual=True). When dual=False the underlying implementation of LinearSVC is not random and random_state has no effect on the results. 'Dual' is chosen automatically by the model based on the values of n_samples, n_features, loss, multi_class and penalty.

Controls:

  • Data shuffling
  • Initialization
  • Cross-validation

Purpose:

  • Reproducibility
  • Debugging
  • Result validation
  • Consistent behavior
1000

Maximum iteration limit:

Purpose:

  • Prevents infinite loops
  • Controls training time
  • Resource management

Typical values:

  • Simple: 500-1000
  • Standard: 1000-2000
  • Complex: 2000+

Note: Higher for harder problems

Hyperparameter optimization for Linear SVC:

Search process:

  1. Model structure:

    • Regularization types
    • Loss functions
    • Multi-class strategies
  2. Optimization parameters:

    • Regularization strength
    • Convergence criteria
    • Training limits
  3. Model features:

    • Intercept options
    • Class weights
    • Scaling factors

Computational considerations:

  • Time complexity: O(n_params * n_samples * features)
  • Memory usage: O(n_params * features)
  • Storage: O(n_params * features)

Penalty

[enum, ...]
L2

Regularization norm for weight vector:

Mathematical form:

  • L1:
  • L2:

Trade-offs:

  • Feature selection vs stability
  • Sparsity vs smoothness
  • Memory vs computation
  • Solution uniqueness
L1 ~

L1 norm regularization (Lasso):

Properties:

  • Produces sparse solutions
  • Built-in feature selection
  • Robust to outliers
  • Non-smooth optimization

Best for:

  • Feature selection needs
  • High-dimensional data
  • Redundant features
  • Memory constraints

Note: Not compatible with 'hinge' loss

L2 ~

L2 norm regularization (Ridge):

Properties:

  • Smooth solutions
  • Stable optimization
  • All features used
  • Unique solution

Best for:

  • General purpose use
  • Correlated features
  • Numerical stability
  • Default choice

Note: Standard SVM regularization

Loss

[enum, ...]
SquaredHinge

Loss function for optimization:

Role:

  • Measures prediction error
  • Defines optimization objective
  • Influences model behavior
  • Affects computational efficiency

Selection impact:

  • Training speed
  • Solution properties
  • Model robustness
  • Optimization stability
Hinge ~

Standard SVM hinge loss:

Properties:

  • Maximum margin classifier
  • Sparse in dual space
  • Non-smooth function
  • Original SVM loss

Best for:

  • Standard SVM behavior
  • Margin maximization
  • L2 regularization

Note: Not compatible with L1 penalty

SquaredHinge ~

Squared hinge loss:

Properties:

  • Smooth function
  • Stronger penalties
  • Differentiable
  • Faster optimization

Best for:

  • Faster convergence
  • Numerical stability
  • General use
  • Both L1/L2 penalties

Tol

[f64, ...]
0.0001

Tolerance thresholds to evaluate:

Search ranges:

  1. Standard scale:

    • [1e-4, 1e-3, 1e-2]
    • [0.0001, 0.001, 0.01]
  2. Fine-tuning:

    • [0.0005, 0.001, 0.002]
    • [0.0001, 0.0005, 0.001]

Trade-off: Precision vs speed

CFactor

[f64, ...]
1

Regularization strengths to evaluate:

Search spaces:

  1. Log scale (recommended):

    • [0.1, 1.0, 10.0, 100.0]
    • [0.01, 0.1, 1.0, 10.0]
  2. Fine-grained:

    • [0.1, 0.5, 1.0, 2.0, 5.0]
    • [1.0, 2.0, 5.0, 10.0]

Note: Critical parameter for performance

MultiClass

[enum, ...]
Ovr

Determines the multi-class strategy if y contains more than two classes.

Purpose:

  • Extends binary classification
  • Handles multiple classes
  • Defines decision boundaries
  • Structures model architecture

Trade-offs:

  • Computational efficiency
  • Memory requirements
  • Model complexity
  • Prediction accuracy
Ovr ~

One-vs-Rest strategy (One-vs-All):

Implementation:

  • n_classes binary classifiers
  • Each class vs all others
  • Independent optimizations
  • Parallel training possible

Advantages:

  • Computationally efficient
  • Linear memory scaling
  • Easy interpretation
  • Well-proven approach

Best for:

  • Large-scale problems
  • Many classes
  • Production systems
  • Default choice
CrammerSinger ~

Crammer-Singer multi-class optimization:

Properties:

  • Joint optimization
  • Consistent formulation
  • Direct multi-class approach
  • Theoretically motivated

Trade-offs:

  • Computationally intensive
  • Higher memory usage
  • Complex optimization
  • Rarely better accuracy

Best for:

  • Research purposes
  • Small datasets
  • Theoretical studies
  • Special cases

FitIntercept

[bool, ...]
true

Intercept fitting options:

Search combinations:

  1. Single option:

    • [true]: With intercept
    • [false]: No intercept
  2. Complete evaluation:

    • [true, false]: Compare both

Impact: Model flexibility and bias

1

Intercept scaling factors to evaluate:

Search ranges:

  1. Standard range:

    • [0.1, 1.0, 10.0]
    • [0.5, 1.0, 2.0]
  2. Extended search:

    • [0.1, 0.5, 1.0, 2.0, 5.0]
    • [1.0, 2.0, 5.0, 10.0]

Note: Only relevant with fit_intercept=true

ClassWeight

[enum, ...]
None

Class importance weighting schemes:

Purpose:

  • Handles class imbalance
  • Adjusts error penalties
  • Controls class importance
  • Influences optimization

Impact:

  • Training behavior
  • Decision boundaries
  • Prediction bias
  • Model sensitivity
None ~

Equal class weights:

Properties:

  • All classes weighted equally
  • Natural class distribution
  • Standard optimization
  • No bias adjustment

Best for:

  • Balanced datasets
  • Equal error costs
  • Default scenarios
  • When prior unknown
Balanced ~

Inverse frequency weighting:

Formula:

Properties:

  • Automatic adjustment
  • Inverse class frequency
  • Balanced errors
  • Compensates imbalance

Best for:

  • Imbalanced classes
  • Minority class focus
  • Skewed distributions
  • Fair classification

MaxIter

[i64, ...]
1000

Maximum iterations to evaluate:

Search ranges:

  1. Conservative:

    • [500, 1000, 2000]
    • [1000, 2000, 5000]
  2. Extensive:

    • [1000, 2000, 5000, 10000]
    • [2000, 5000, 10000, 20000]

Consider: Convergence needs vs time

Random seed for reproducibility:

Controls:

  • Cross-validation splits
  • Data shuffling
  • Parameter selection

Important for:

  • Result reproducibility
  • Fair comparison
  • Debugging
  • Validation
Accuracy

Performance evaluation metrics:

Purpose:

  • Model selection
  • Performance evaluation
  • Optimization criterion
  • Comparison basis

Selection criteria:

  • Problem objectives
  • Class distribution
  • Error costs
  • Application needs
Default ~

Model's built-in scoring:

Properties:

  • Accuracy score
  • Fast computation
  • Standard metric
  • Equal error weights

Best for:

  • Initial evaluation
  • Balanced datasets
  • Quick assessment
  • Standard problems
Accuracy ~

Classification accuracy score:

Formula:

Properties:

  • Range: [0, 1]
  • Intuitive metric
  • Easy interpretation
  • Standard benchmark

Best for:

  • Balanced classes
  • Equal costs
  • General evaluation
BalancedAccuracy ~

Class-normalized accuracy:

Formula:

Properties:

  • Range: [0, 1]
  • Class-independent
  • Balanced evaluation
  • Robust to imbalance

Best for:

  • Imbalanced datasets
  • Varying class sizes
  • Fair evaluation

Split

oneof
DefaultSplit

Standard train-test split configuration optimized for general classification tasks.

Configuration:

  • Test size: 20% (0.2)
  • Random seed: 98
  • Shuffling: Enabled
  • Stratification: Based on target distribution

Advantages:

  • Preserves class distribution
  • Provides reliable validation
  • Suitable for most datasets

Best for:

  • Medium to large datasets
  • Independent observations
  • Initial model evaluation

Splitting uses the ShuffleSplit strategy or StratifiedShuffleSplit strategy depending on the field stratified. Note: If shuffle is false then stratified must be false.

Configurable train-test split parameters for specialized requirements. Allows fine-tuning of data division strategy for specific use cases or constraints.

Use cases:

  • Time series data
  • Grouped observations
  • Specific train/test ratios
  • Custom validation schemes

Random seed for reproducible splits. Ensures:

  • Consistent train/test sets
  • Reproducible experiments
  • Comparable model evaluations

Same seed guarantees identical splits across runs.

true

Data shuffling before splitting. Effects:

  • true: Randomizes order, better for i.i.d. data
  • false: Maintains order, important for time series

When to disable:

  • Time dependent data
  • Sequential patterns
  • Grouped observations
0.8

Proportion of data for training. Considerations:

  • Larger (e.g., 0.8-0.9): Better model learning
  • Smaller (e.g., 0.5-0.7): Better validation

Common splits:

  • 0.8: Standard (80/20 split)
  • 0.7: More validation emphasis
  • 0.9: More training emphasis
false

Maintain class distribution in splits. Important when:

  • Classes are imbalanced
  • Small classes present
  • Representative splits needed

Requirements:

  • Classification tasks only
  • Cannot use with shuffle=false
  • Sufficient samples per class

Cv

oneof
DefaultCv

Standard cross-validation configuration using stratified 3-fold splitting.

Configuration:

  • Folds: 3
  • Method: StratifiedKFold
  • Stratification: Preserves class proportions

Advantages:

  • Balanced evaluation
  • Reasonable computation time
  • Good for medium-sized datasets

Limitations:

  • May be insufficient for small datasets
  • Higher variance than larger fold counts
  • May miss some data patterns

Configurable stratified k-fold cross-validation for specific validation requirements.

Features:

  • Adjustable fold count with NFolds determining the number of splits.
  • Stratified sampling
  • Preserved class distributions

Use cases:

  • Small datasets (more folds)
  • Large datasets (fewer folds)
  • Detailed model evaluation
  • Robust performance estimation
3

Number of cross-validation folds. Guidelines:

  • 3-5: Large datasets, faster training
  • 5-10: Standard choice, good balance
  • 10+: Small datasets, thorough evaluation

Trade-offs:

  • More folds: Better evaluation, slower training
  • Fewer folds: Faster training, higher variance

Must be at least 2.

K-fold cross-validation without stratification. Divides data into k consecutive folds for iterative validation.

Process:

  • Splits data into k equal parts
  • Each fold serves as validation once
  • Remaining k-1 folds form training set

Use cases:

  • Regression problems
  • Large, balanced datasets
  • When stratification unnecessary
  • Continuous target variables

Limitations:

  • May not preserve class distributions
  • Less suitable for imbalanced data
  • Can create biased splits with ordered data

Number of folds for cross-validation. Selection guide: Recommended values:

  • 5: Standard choice (default)
  • 3: Large datasets/quick evaluation
  • 10: Thorough evaluation/smaller datasets

Trade-offs:

  • Higher values: More thorough, computationally expensive
  • Lower values: Faster, potentially higher variance

Must be at least 2 for valid cross-validation.

Random seed for fold generation when shuffling. Important for:

  • Reproducible results
  • Consistent fold assignments
  • Benchmark comparisons
  • Debugging and validation

Set specific value for reproducibility across runs.

true

Whether to shuffle data before splitting into folds. Effects:

  • true: Randomized fold composition (recommended)
  • false: Sequential splitting

Enable when:

  • Data may have ordering
  • Better fold independence needed

Disable for:

  • Time series data
  • Ordered observations

Stratified K-fold cross-validation maintaining class proportions across folds.

Key features:

  • Preserves class distribution in each fold
  • Handles imbalanced datasets
  • Ensures representative splits

Best for:

  • Classification problems
  • Imbalanced class distributions
  • When class proportions matter

Requirements:

  • Classification tasks only
  • Sufficient samples per class
  • Categorical target variable

Number of stratified folds. Guidelines: Typical values:

  • 5: Standard for most cases
  • 3: Quick evaluation/large datasets
  • 10: Detailed evaluation/smaller datasets

Considerations:

  • Must allow sufficient samples per class per fold
  • Balance between stability and computation time
  • Consider smallest class size when choosing

Seed for reproducible stratified splits. Ensures:

  • Consistent fold assignments
  • Reproducible results
  • Comparable experiments
  • Systematic validation

Fixed seed guarantees identical stratified splits.

false

Data shuffling before stratified splitting. Impact:

  • true: Randomizes while maintaining stratification
  • false: Maintains data order within strata

Use cases:

  • true: Independent observations
  • false: Grouped or sequential data

Class proportions maintained regardless of setting.

Random permutation cross-validator with independent sampling.

Characteristics:

  • Random sampling for each split
  • Independent train/test sets
  • More flexible than K-fold
  • Can have overlapping test sets

Advantages:

  • Control over test size
  • Fresh splits each iteration
  • Good for large datasets

Limitations:

  • Some samples might never be tested
  • Others might be tested multiple times
  • No guarantee of complete coverage

Number of random splits to perform. Consider: Common values:

  • 5: Standard evaluation
  • 10: More thorough assessment
  • 3: Quick estimates

Trade-offs:

  • More splits: Better estimation, longer runtime
  • Fewer splits: Faster, less stable estimates

Balance between computation and stability.

Random seed for reproducible shuffling. Controls:

  • Split randomization
  • Sample selection
  • Result reproducibility

Important for:

  • Debugging
  • Comparative studies
  • Result verification
0.2

Proportion of samples for test set. Guidelines: Common ratios:

  • 0.2: Standard (80/20 split)
  • 0.25: More validation emphasis
  • 0.1: More training data

Considerations:

  • Dataset size
  • Model complexity
  • Validation requirements

It must be between 0.0 and 1.0.

Stratified random permutation cross-validator combining shuffle-split with stratification.

Features:

  • Maintains class proportions
  • Random sampling within strata
  • Independent splits
  • Flexible test size

Ideal for:

  • Imbalanced datasets
  • Large-scale problems
  • When class distributions matter
  • Flexible validation schemes

Number of stratified random splits. Guidelines: Recommended values:

  • 5: Standard evaluation
  • 10: Detailed analysis
  • 3: Quick assessment

Consider:

  • Sample size per class
  • Computational resources
  • Stability requirements

Seed for reproducible stratified sampling. Ensures:

  • Consistent class proportions
  • Reproducible splits
  • Comparable experiments

Critical for:

  • Benchmarking
  • Research studies
  • Quality assurance
0.2

Fraction of samples for stratified test set. Best practices: Common splits:

  • 0.2: Balanced evaluation
  • 0.3: More thorough testing
  • 0.15: Preserve training size

Consider:

  • Minority class size
  • Overall dataset size
  • Validation objectives

It must be between 0.0 and 1.0.

Time Series cross-validator. Provides train/test indices to split time series data samples that are observed at fixed time intervals, in train/test sets. It is a variation of k-fold which returns first k folds as train set and the k + 1th fold as test set. Note that unlike standard cross-validation methods, successive training sets are supersets of those that come before them. Also, it adds all surplus data to the first training partition, which is always used to train the model. Key features:

  • Maintains temporal dependence
  • Expanding window approach
  • Forward-chaining splits
  • No future data leakage

Use cases:

  • Sequential data
  • Financial forecasting
  • Temporal predictions
  • Time-dependent patterns

Note: Training sets are supersets of previous iterations.

Number of temporal splits. Considerations: Typical values:

  • 5: Standard forward chaining
  • 3: Limited historical data
  • 10: Long time series

Impact:

  • Affects training window growth
  • Determines validation points
  • Influences computational load

Maximum size of training set. Should be strictly less than the number of samples. Applications:

  • 0: Use all available past data
  • >0: Rolling window of fixed size

Use cases:

  • Limit historical relevance
  • Control computational cost
  • Handle concept drift
  • Memory constraints

Number of samples in each test set. When 0:

  • Auto-calculated as n_samples/(n_splits+1)
  • Ensures equal-sized test sets

Considerations:

  • Forecast horizon
  • Validation requirements
  • Available future data

Gap

u64
0

Number of samples to exclude from the end of each train set before the test set.Gap between train and test sets. Uses:

  • Avoid data leakage
  • Model forecast lag
  • Buffer periods

Common scenarios:

  • 0: Continuous prediction
  • >0: Forward gap for realistic evaluation
  • Match business forecasting needs