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LinearRegression.cs
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LinearRegression.cs
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/*****************************************************************************
Copyright 2018 The TensorFlow.NET Authors. All Rights Reserved.
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.
******************************************************************************/
using System;
using Tensorflow.NumPy;
using static Tensorflow.Binding;
namespace TensorFlowNET.Examples
{
/// <summary>
/// A linear regression learning algorithm example using TensorFlow library.
/// https://github.com/aymericdamien/TensorFlow-Examples/blob/master/examples/2_BasicModels/linear_regression.py
/// </summary>
public class LinearRegression : SciSharpExample, IExample
{
public int training_epochs = 1000;
// Parameters
float learning_rate = 0.01f;
int display_step = 50;
NDArray train_X, train_Y;
int n_samples;
public ExampleConfig InitConfig()
=> Config = new ExampleConfig
{
Name = "Linear Regression (Graph)",
Enabled = true,
IsImportingGraph = false
};
public bool Run()
{
tf.compat.v1.disable_eager_execution();
// Training Data
PrepareData();
// tf Graph Input
var X = tf.placeholder(tf.float32);
var Y = tf.placeholder(tf.float32);
// Set model weights
// We can set a fixed init value in order to debug
// var rnd1 = rng.randn<float>();
// var rnd2 = rng.randn<float>();
var W = tf.Variable(-0.06f, name: "weight");
var b = tf.Variable(-0.73f, name: "bias");
// Construct a linear model
var pred = tf.add(tf.multiply(X, W), b);
// Mean squared error
var cost = tf.reduce_sum(tf.pow(pred - Y, 2.0f)) / (2.0f * n_samples);
// Gradient descent
// Note, minimize() knows to modify W and b because Variable objects are trainable=True by default
var optimizer = tf.train.GradientDescentOptimizer(learning_rate).minimize(cost);
// Initialize the variables (i.e. assign their default value)
var init = tf.global_variables_initializer();
// Start training
using var sess = tf.Session();
// Run the initializer
sess.run(init);
// Fit all training data
for (int epoch = 0; epoch < training_epochs; epoch++)
{
foreach (var (x, y) in zip<float>(train_X, train_Y))
sess.run(optimizer, (X, x), (Y, y));
// Display logs per epoch step
if ((epoch + 1) % display_step == 0)
{
var c = sess.run(cost, (X, train_X), (Y, train_Y));
Console.WriteLine($"Epoch: {epoch + 1} cost={c} " + $"W={sess.run(W)} b={sess.run(b)}");
}
}
Console.WriteLine("Optimization Finished!");
var training_cost = sess.run(cost, (X, train_X), (Y, train_Y));
Console.WriteLine($"Training cost={training_cost} W={sess.run(W)} b={sess.run(b)}");
// Testing example
var test_X = np.array(6.83f, 4.668f, 8.9f, 7.91f, 5.7f, 8.7f, 3.1f, 2.1f);
var test_Y = np.array(1.84f, 2.273f, 3.2f, 2.831f, 2.92f, 3.24f, 1.35f, 1.03f);
Console.WriteLine("Testing... (Mean square loss Comparison)");
var testing_cost = sess.run(tf.reduce_sum(tf.pow(pred - Y, 2.0f)) / (2.0f * test_X.shape[0]),
(X, test_X), (Y, test_Y));
Console.WriteLine($"Testing cost={testing_cost}");
var diff = Math.Abs((float)training_cost - (float)testing_cost);
Console.WriteLine($"Absolute mean square loss difference: {diff}");
return diff < 0.01;
}
public override void PrepareData()
{
train_X = np.array(3.3f, 4.4f, 5.5f, 6.71f, 6.93f, 4.168f, 9.779f, 6.182f, 7.59f, 2.167f,
7.042f, 10.791f, 5.313f, 7.997f, 5.654f, 9.27f, 3.1f);
train_Y = np.array(1.7f, 2.76f, 2.09f, 3.19f, 1.694f, 1.573f, 3.366f, 2.596f, 2.53f, 1.221f,
2.827f, 3.465f, 1.65f, 2.904f, 2.42f, 2.94f, 1.3f);
n_samples = (int)train_X.shape[0];
}
}
}