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Clog: Client Logging, Silverlight Edition

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16 Apr 2009CPOL14 min read 276K   3.1K   112  
A customizable log provider system that allows you to harness your existing logging system to log client side messages to your server. Includes a Silverlight interface and Log Viewer.
#region File and License Information
/*
<File>
	<Copyright>Copyright © 2007, Daniel Vaughan. All rights reserved.</Copyright>
	<License see="prj:///Documentation/License.txt"/>
	<Owner Name="Daniel Vaughan" Email="dbvaughan@gmail.com"/>
	<CreationDate>2009-01-18 17:05:21Z</CreationDate>
	<LastSubmissionDate>$Date: $</LastSubmissionDate>
	<Version>$Revision: $</Version>
</File>
*/
#endregion

using System.Collections.Generic;

namespace DanielVaughan.AI.NeuralNetworking
{
	public partial class NeuralNetwork
	{
		/// <summary>
		/// Measures the accuracy of the neural network.
		/// </summary>
		/// <returns>A value between 0 and 1. The higher the value 
		/// the more accurate the neural network is deemed to be.</returns>
		public double MeasureAccuracy()
		{
			if (totalTrainingSet == null)
			{
				return 0;
			}

			var inputs = new List<double[]>();
			var outputs = new List<double[]>();
			foreach (var pair in totalTrainingSet.InputOutputDictionary)
			{
				inputs.Add(pair.Key.Data);
				outputs.Add(pair.Value.Data);
			}

			return MeasureAccuracy(inputs.ToArray(), outputs.ToArray());
		}

		/// <summary>
		/// Measures the accuracy of the neural network.
		/// </summary>
		/// <param name="input">The input set.</param>
		/// <param name="expectedOutput">The expected output set.</param>
		/// <returns>A value between 0 and 1. The higher the value 
		/// the more accurate the neural network is deemed to be.</returns>
		public double MeasureAccuracy(bool[][] input, bool[][] expectedOutput)
		{
			ArgumentValidator.AssertNotNull(input, "input");
			ArgumentValidator.AssertNotNull(expectedOutput, "expectedOutput");

			var inputDoubles = ConvertToDoubleArray(input);
			var expectedOutputDoubles = ConvertToDoubleArray(expectedOutput);
			return MeasureAccuracy(inputDoubles, expectedOutputDoubles);
		}

		/// <summary>
		/// Measures the accuracy of the neural network.
		/// </summary>
		/// <param name="input">The input set.</param>
		/// <param name="expectedOutput">The expected output set.</param>
		/// <returns>A value between 0 and 1. The higher the value 
		/// the more accurate the neural network is deemed to be.</returns>
		public double MeasureAccuracy(double[][] input, double[][] expectedOutput)
		{
			ArgumentValidator.AssertNotNull(input, "input");
			ArgumentValidator.AssertNotNull(expectedOutput, "expectedOutput");

			double accumulatedDifference = 0;
			int count = 0;
			for (int i = 0; i < input.Length; i++)
			{
				var inputRow = input[i];
				for (int j = 0; j < inputRow.Length; j++)
				{
					InputLayer[j].Output = inputRow[j];
				}

				Pulse();

				var outputRow = expectedOutput[i];
				for (int j = 0; j < outputRow.Length; j++)
				{
					double neuronOutput = OutputLayer[j].Output;
					double expectedOutputValue = outputRow[j];
					/* Calculate the difference. */
					double difference = neuronOutput > expectedOutputValue
						? neuronOutput - expectedOutputValue : expectedOutputValue - neuronOutput;
					accumulatedDifference += difference;
					count++;
				}
			}
			double result = count != 0 ? 1 - (accumulatedDifference / count) : 0;
			return result;
		}
	}
}

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License

This article, along with any associated source code and files, is licensed under The Code Project Open License (CPOL)


Written By
Engineer
Switzerland Switzerland
Daniel is a former senior engineer in Technology and Research at the Office of the CTO at Microsoft, working on next generation systems.

Previously Daniel was a nine-time Microsoft MVP and co-founder of Outcoder, a Swiss software and consulting company.

Daniel is the author of Windows Phone 8 Unleashed and Windows Phone 7.5 Unleashed, both published by SAMS.

Daniel is the developer behind several acclaimed mobile apps including Surfy Browser for Android and Windows Phone. Daniel is the creator of a number of popular open-source projects, most notably Codon.

Would you like Daniel to bring value to your organisation? Please contact

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