Inheritance: ThermalNetwork
        /// <summary>
        /// Read a an object.
        /// </summary>
        public Object Read(Stream mask0)
        {
            var result = new HopfieldNetwork();
            var ins0 = new EncogReadHelper(mask0);
            EncogFileSection section;

            while ((section = ins0.ReadNextSection()) != null)
            {
                if (section.SectionName.Equals("HOPFIELD")
                    && section.SubSectionName.Equals("PARAMS"))
                {
                    IDictionary<String, String> paras = section.ParseParams();
                    EngineArray.PutAll(paras, result.Properties);
                }
                if (section.SectionName.Equals("HOPFIELD")
                    && section.SubSectionName.Equals("NETWORK"))
                {
                    IDictionary<String, String> p = section.ParseParams();
                    result.Weights = NumberList.FromList(CSVFormat.EgFormat,
                                                         (p[PersistConst.Weights]));
                    result.SetCurrentState(NumberList.FromList(CSVFormat.EgFormat,
                                                               (p[PersistConst.Output])));
                    result.NeuronCount = EncogFileSection.ParseInt(p,
                                                                   PersistConst.NeuronCount);
                }
            }

            return result;
        }
 private void ValidateHopfield(HopfieldNetwork network)
 {
     Assert.AreEqual(4, network.NeuronCount);
     Assert.AreEqual(4, network.CurrentState.Count);
     Assert.AreEqual(16, network.Weights.Length);
     Assert.AreEqual(1.0, network.GetWeight(1, 1));
 }
        /// <summary>
        /// Read a an object.
        /// </summary>
        public Object Read(Stream mask0)
        {
            var result = new HopfieldNetwork();
            var ins0   = new EncogReadHelper(mask0);
            EncogFileSection section;

            while ((section = ins0.ReadNextSection()) != null)
            {
                if (section.SectionName.Equals("HOPFIELD") &&
                    section.SubSectionName.Equals("PARAMS"))
                {
                    IDictionary <String, String> paras = section.ParseParams();
                    EngineArray.PutAll(paras, result.Properties);
                }
                if (section.SectionName.Equals("HOPFIELD") &&
                    section.SubSectionName.Equals("NETWORK"))
                {
                    IDictionary <String, String> p = section.ParseParams();
                    result.Weights = NumberList.FromList(CSVFormat.EgFormat,
                                                         (p[PersistConst.Weights]));
                    result.SetCurrentState(NumberList.FromList(CSVFormat.EgFormat,
                                                               (p[PersistConst.Output])));
                    result.NeuronCount = EncogFileSection.ParseInt(p,
                                                                   PersistConst.NeuronCount);
                }
            }

            return(result);
        }
        public void Execute(IExampleInterface app)
        {
            this.app = app;

            // Create the neural network.
            BasicLayer hopfield;
            var network = new HopfieldNetwork(4);

            // This pattern will be trained
            bool[] pattern1 = {true, true, false, false};
            // This pattern will be presented
            bool[] pattern2 = {true, false, false, false};
            IMLData result;

            var data1 = new BiPolarMLData(pattern1);
            var data2 = new BiPolarMLData(pattern2);
            var set = new BasicMLDataSet();
            set.Add(data1);

            // train the neural network with pattern1
            app.WriteLine("Training Hopfield network with: "
                          + FormatBoolean(data1));

            network.AddPattern(data1);
            // present pattern1 and see it recognized
            result = network.Compute(data1);
            app.WriteLine("Presenting pattern:" + FormatBoolean(data1)
                          + ", and got " + FormatBoolean(result));
            // Present pattern2, which is similar to pattern 1. Pattern 1
            // should be recalled.
            result = network.Compute(data2);
            app.WriteLine("Presenting pattern:" + FormatBoolean(data2)
                          + ", and got " + FormatBoolean(result));
        }
        public void TestPersistSerial()
        {
            HopfieldNetwork network = new HopfieldNetwork(4);
            network.SetWeight(1, 1, 1);

            SerializeObject.Save(SERIAL_FILENAME.ToString(), network);
            HopfieldNetwork network2 = (HopfieldNetwork)SerializeObject.Load(SERIAL_FILENAME.ToString());

            ValidateHopfield(network2);
        }
        public void TestPersistEG()
        {
            HopfieldNetwork network = new HopfieldNetwork(4);
            network.SetWeight(1, 1, 1);
            network.SetProperty("x", 10);

            EncogDirectoryPersistence.SaveObject(EG_FILENAME, network);
            HopfieldNetwork network2 = (HopfieldNetwork)EncogDirectoryPersistence.LoadObject((EG_FILENAME));

            ValidateHopfield(network2);
        }
 /// <summary>
 /// Generate the Hopfield neural network.
 /// </summary>
 ///
 /// <returns>The generated network.</returns>
 public IMLMethod Generate()
 {
     var logic = new HopfieldNetwork(_neuronCount);
     return logic;
 }
 public void Evaluate(HopfieldNetwork hopfield, String[][] pattern)
 {
     for (int i = 0; i < pattern.Length; i++)
     {
         BiPolarMLData pattern1 = ConvertPattern(pattern, i);
         hopfield.CurrentState = pattern1;
         int cycles = hopfield.RunUntilStable(100);
         BiPolarMLData pattern2 = hopfield.CurrentState;
         Console.WriteLine("Cycles until stable(max 100): " + cycles + ", result=");
         Display(pattern1, pattern2);
         Console.WriteLine(@"----------------------");
     }
 }
Example #9
0
 public object Read(Stream mask0)
 {
     EncogReadHelper helper;
     EncogFileSection section;
     IDictionary<string, string> dictionary2;
     HopfieldNetwork network = new HopfieldNetwork();
     goto Label_00F0;
     Label_000D:
     if (section.SectionName.Equals("HOPFIELD") || (0 != 0))
     {
         goto Label_0031;
     }
     Label_0022:
     if ((section = helper.ReadNextSection()) != null)
     {
         if (section.SectionName.Equals("HOPFIELD"))
         {
             if (0 != 0)
             {
                 goto Label_0031;
             }
             if (3 != 0)
             {
                 if (0xff == 0)
                 {
                     goto Label_0022;
                 }
                 if (section.SubSectionName.Equals("PARAMS"))
                 {
                     IDictionary<string, string> source = section.ParseParams();
                     if (0 == 0)
                     {
                         EngineArray.PutAll<string, string>(source, network.Properties);
                     }
                 }
             }
         }
         goto Label_000D;
     }
     return network;
     Label_0031:
     if (section.SubSectionName.Equals("NETWORK"))
     {
         dictionary2 = section.ParseParams();
     }
     else
     {
         goto Label_0022;
     }
     network.Weights = NumberList.FromList(CSVFormat.EgFormat, dictionary2["weights"]);
     if (0 == 0)
     {
         network.SetCurrentState(NumberList.FromList(CSVFormat.EgFormat, dictionary2["output"]));
         network.NeuronCount = EncogFileSection.ParseInt(dictionary2, "neurons");
         goto Label_0022;
     }
     if (3 != 0)
     {
         goto Label_000D;
     }
     Label_00F0:
     helper = new EncogReadHelper(mask0);
     goto Label_0022;
 }