Implementation:Tensorflow Tfjs Exports Regularizers
| Knowledge Sources | |
|---|---|
| Domains | Deep_Learning, Layers_API, Regularization |
| Last Updated | 2026-02-10 06:00 GMT |
Overview
This module provides the public API factory functions for creating weight regularizer instances in TensorFlow.js Layers. Regularizers add penalty terms to the loss function during training to prevent overfitting. The three factory functions correspond to L1 regularization, L2 regularization, and combined L1+L2 regularization, exposed under the tf.regularizers namespace.
Code Reference
Source Location
tfjs-layers/src/exports_regularizers.ts (GitHub)
Imports
import * as regularizers from './regularizers';
import {L1Args, L1L2, L1L2Args, L2Args, Regularizer} from './regularizers';
Factory Functions
l1l2
Creates a regularizer applying both L1 and L2 penalties: loss += sum(l1 * abs(x)) + sum(l2 * x^2).
export function l1l2(config?: L1L2Args): Regularizer
l1
Creates a regularizer applying L1 penalty only: loss += sum(l1 * abs(x)).
export function l1(config?: L1Args): Regularizer
l2
Creates a regularizer applying L2 penalty only: loss += sum(l2 * x^2).
export function l2(config?: L2Args): Regularizer
I/O Contract
| Function | Input | Output |
|---|---|---|
l1l2 |
L1L2Args ({l1?, l2?}) |
Regularizer
|
l1 |
L1Args ({l1}) |
Regularizer
|
l2 |
L2Args ({l2}) |
Regularizer
|
Usage Example
import * as tf from '@tensorflow/tfjs';
const model = tf.sequential();
model.add(tf.layers.dense({
units: 64,
kernelRegularizer: tf.regularizers.l1l2({l1: 0.01, l2: 0.01}),
inputShape: [128]
}));
Related Pages
- Tensorflow_Tfjs_Regularizers - Underlying regularizer class implementations (L1L2, l1, l2)
- Tensorflow_Tfjs_Exports_Constraints - Factory functions for weight constraints
- Tensorflow_Tfjs_Exports_Initializers - Factory functions for weight initializers