definition of Neural network code example
Example: neural network
// npm i @death_raider/neural-network
const NeuralNetwork = require('@death_raider/neural-network').NeuralNetwork
//creates ANN with 2 input nodes, 1 hidden layers with 2 hidden nodes and 1 output node
let network = new NeuralNetwork({
input_nodes : 2,
layer_count : [2],
output_nodes :1,
weight_bias_initilization_range : [-1,1]
});
//format for activation function = [ function , derivative of function ]
network.Activation.hidden = [(x)=>1/(1+Math.exp(-x)),(x)=>x*(1-x)] //sets activation for hidden layers as sigmoid function
function xor(){
let inp = [Math.floor(Math.random()*2),Math.floor(Math.random()*2)]; //random inputs 0 or 1 per cell
let out = (inp.reduce((a,b)=>a+b)%2 == 0)?[0]:[1]; //if even number of 1's in input then 0 else 1 as output
return [inp,out]; //train or validation functions should have [input,output] format
}
network.train({
TotalTrain : 1e+6, //total data for training (not epochs)
batch_train : 1, //batch size for training
trainFunc : xor, //training function to get data
TotalVal : 1000, //total data for validation (not epochs)
batch_val : 1, //batch size for validation
validationFunc : xor, //validation function to get data
learning_rate : 0.1 //learning rate (default = 0.0000001)
});
console.log("Average Validation Loss ->",network.Loss.Validation_Loss.reduce((a,b)=>a+b)/network.Loss.Validation_Loss.length);
// Result after running it a few times
// Average Validation Loss -> 0.00004760326022482792
// Average Validation Loss -> 0.000024864418333478723
// Average Validation Loss -> 0.000026908106414283446