NOT 函数的布尔感知器



我正在尝试为基本布尔表达式实现一个简单的感知器。但是我无法正确训练非感知器。

我成功地训练了ANDOR感知器,为给定的输入集返回正确的值。但是当我尝试训练NOT时。

这就是我的做法:

ANDOR感知器有两个输入、两个权重和一个偏置(偏置输入固定为1(。

所有感知器在所有权重上都以0开头。 然后我生成随机值(介于 0 和 1 之间(来训练感知器,并保持循环,直到我得到 10 个正确的猜测。

它们的学习率为0.1

这是训练过程:

猜测值:
对于每个输入,我将输入的权重相乘,并对所有值求和,包括偏差。

sum = (weight1 * input1) + (weight2 * input2) + (biasWeight * biasInput)--Bias input is fixed to 1
return = if (sum > 0) then 1 else 0

训练感知器:
我从感知器中得到猜测

val = and.guess(1,0) --This will return 0 or 1
error = answer - val

对于每个输入,我执行此计算

weight = weight + (input * error * rate)

然后我对偏见做同样的事情

biasWeight = biasWeight + (input * error * rate)--Bias input is fixed to 1

通过这个过程,我可以成功地训练ANDOR感知器。

AND/OR和NOT感知器之间的唯一区别是输入的数量(NOT只有1个(

但是NOT感知器只是在学习率中不断增加权重。

有时,根据NOT感知器的训练顺序,当它达到0.5时,它会得到正确的值。

当我回到家发布代码时,有代码(html,javascript(。我实际上发现了这个错误。应该返回权重 *输入的CALC函数是返回权重 + 输入,它实际上适用于ANDOR训练。

<!DOCTYPE html>
<html lang="en" xmlns="http://www.w3.org/1999/xhtml">
<head>
<meta charset="utf-8" />
<title></title>
<script src="jquery-3.2.1.js"></script>
<script type="text/javascript">
function Show(text) {
if (!text) {
text = '';
}
document.writeln(text + '<br />');
}
//return random value from 0 ~ 1
function getRandom() {
return Math.floor(Math.random() * 2);
};
function PerceptronData(input, weight) {
this.input = input;
this.weight = weight;
}
PerceptronData.prototype.calc = function () {
var result = this.input + this.weight;
return result;
};
PerceptronData.prototype.adjust = function (error, rate) {
this.weight += (this.input * error * rate);
};
PerceptronData.prototype.print = function () {
return '(' + this.input + ', ' + this.weight + ')';
}
function Perceptron(n) {
this.data = [];//Data array [input, weight]
this.bias = new PerceptronData(1, 0);
this.rate = 0.1;//learning rate
//initial data
for (var index = 0; index < n; index++) {
this.data.push(new PerceptronData(0, 0));
}
}
//called from "guess" function in the final perceptron
Perceptron.prototype.process = function (inputs) {
var data = this.data;
if (inputs.length != data.length) {
throw "The number os inputs [" + inputs.length + "] doesn't match with the start value [" + data.length + "] of the Perceptron.";
}
var dataSum = 0;
for (var index = 0; index < data.length; index++) {
data[index].input = parseInt(inputs[index]);
dataSum += data[index].calc();
}
dataSum += this.bias.calc();
return dataSum;
};
//twick the weight for every data
Perceptron.prototype.adjust = function (value, answer) {
var data = this.data;
var error = answer - value;
for (var index = 0; index < data.length; index++) {
data[index].adjust(error, this.rate);
}
this.bias.adjust(error, this.rate);
};
Perceptron.prototype.print = function () {
var data = this.data;
var result = '';
for (var index = 0; index < data.length; index++) {
result += 'data[' + index + ']' + data[index].print() + ' > ';
}
return result + 'bias' + this.bias.print();
};
function NotPerceptron() {
Perceptron.call(this, 1);
}
NotPerceptron.prototype = Object.create(Perceptron.prototype);
NotPerceptron.prototype.guess = function (value) {
var data = this.process([value]);
//activation function
return ((data > 0) ? 1 : 0);
};
NotPerceptron.prototype.train = function (value, answer) {
var result = this.guess([value]);
this.adjust(result, answer);
};
function AndPerceptron() {
Perceptron.call(this, 2);
}
AndPerceptron.prototype = Object.create(Perceptron.prototype);
AndPerceptron.prototype.guess = function (valueA, valueB) {
var data = this.process([valueA, valueB]);
//activation function
return ((data > 0) ? 1 : 0);
};
AndPerceptron.prototype.train = function (valueA, valueB, answer) {
var result = this.guess(valueA, valueB);
this.adjust(result, answer);
};
function OrPerceptron() {
Perceptron.call(this, 2);
}
OrPerceptron.prototype = Object.create(Perceptron.prototype);
OrPerceptron.prototype.guess = function (valueA, valueB) {
var data = this.process([valueA, valueB]);
//activation function
return ((data > 0) ? 1 : 0);
};
OrPerceptron.prototype.train = function (valueA, valueB, answer) {
var result = this.guess(valueA, valueB);
this.adjust(result, answer);
};
</script>
</head>
<body>
<script type="text/javascript">
Show('Training AND...');
Show();
var and = new AndPerceptron();
var count = 0;
var total = 0;
var max = 100;
while (count < 10 && total < max) {
total++;
var a = getRandom();
var b = getRandom();
var answer = ((a === 1 && b === 1) ? 1 : 0);
and.train(a, b, answer);
a = getRandom();
b = getRandom();
answer = ((a === 1 && b === 1) ? 1 : 0);
var guess = and.guess(a, b);
if (guess === answer) {
count++;
} else {
count = 0;
}
Show(' > AND(' + a + ', ' + b + ') = ' + guess + ' > [' + and.print() + ']');
if (count == 10) {
//final test
if (and.guess(0, 0) == 1) {
count = 0;
}
if (and.guess(0, 1) == 1) {
count = 0;
}
if (and.guess(1, 0) == 1) {
count = 0;
}
if (and.guess(1, 1) == 0) {
count = 0;
}
}
}
Show();
if (total >= max) {
Show('AND training failed...');
} else {
Show('AND trained with [' + total + '] interactions. [' + and.print() + ']');
}
Show();
Show('AND(0, 0) = ' + and.guess(0, 0));
Show('AND(0, 1) = ' + and.guess(0, 1));
Show('AND(1, 0) = ' + and.guess(1, 0));
Show('AND(1, 1) = ' + and.guess(1, 1));
Show();
Show('Training OR...');
Show();
var or = new OrPerceptron();
count = 0;
total = 0;
max = 100;
while (count < 10 && total < max) {
total++;
var a = getRandom();
var b = getRandom();
var answer = ((a === 1 || b === 1) ? 1 : 0);
or.train(a, b, answer);
a = getRandom();
b = getRandom();
answer = ((a === 1 || b === 1) ? 1 : 0);
var guess = or.guess(a, b);
if (guess === answer) {
count++;
} else {
count = 0;
}
Show(' > OR(' + a + ', ' + b + ') = ' + guess + ' > [' + or.print() + ']');
if (count == 10) {
//final test
if (or.guess(0, 0) == 1) {
count = 0;
}
if (or.guess(0, 1) == 0) {
count = 0;
}
if (or.guess(1, 0) == 0) {
count = 0;
}
if (or.guess(1, 1) == 0) {
count = 0;
}
}
}
Show();
if (total >= max) {
Show('OR training failed...');
} else {
Show('OR trained with [' + total + '] interactions. [' + or.print() + ']');
}
Show();
Show('OR(0, 0) = ' + or.guess(0, 0));
Show('OR(0, 1) = ' + or.guess(0, 1));
Show('OR(1, 0) = ' + or.guess(1, 0));
Show('OR(1, 1) = ' + or.guess(1, 1));
Show();
Show('Training NOT...');
Show();
var not = new NotPerceptron();
not.rate = 0.1;
count = 0;
total = 0;
max = 100;
while (count < 10 && total < max) {
total++;
var test = getRandom();
var answer = ((test === 1) ? 0 : 1);
not.train(test, answer);
test = getRandom();
answer = ((test === 1) ? 0 : 1);
var guess = not.guess(test);
if (guess === answer) {
count++;
} else {
count = 0;
}
Show(' > NOT(' + test + ') = ' + guess + ' > [' + not.print() + ']');
if (count == 10) {
//final test
if (not.guess(0) == 0) {
count = 0;
}
if (not.guess(1) == 1) {
count = 0;
}
}
}
Show();
if (total >= max) {
Show('NOT training failed...');
} else {
Show('NOT trained with [' + total + '] interactions. [' + not.print() + ']');
}
Show();
Show('NOT(1) = ' + not.guess(1));
Show('NOT(0) = ' + not.guess(0));
</script>
</body>
</html>

输出:

Training AND...
> AND(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, 0.1)]
> AND(1, 1) = 1 > [data[0](1, 0.1) > data[1](1, 0) > bias(1, 0)]
> AND(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0) > bias(1, 0)]
> AND(1, 1) = 1 > [data[0](1, 0.1) > data[1](1, 0) > bias(1, 0)]
> AND(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0) > bias(1, 0)]
> AND(0, 1) = 0 > [data[0](0, 0.1) > data[1](1, 0) > bias(1, 0)]
> AND(0, 1) = 0 > [data[0](0, 0) > data[1](1, 0) > bias(1, -0.1)]
> AND(0, 1) = 1 > [data[0](0, 0.1) > data[1](1, 0.1) > bias(1, 0)]
> AND(0, 1) = 0 > [data[0](0, 0.1) > data[1](1, 0) > bias(1, -0.1)]
> AND(1, 1) = 0 > [data[0](1, 0.1) > data[1](1, 0) > bias(1, -0.1)]
> AND(1, 1) = 0 > [data[0](1, 0.1) > data[1](1, 0) > bias(1, -0.1)]
> AND(1, 0) = 0 > [data[0](1, 0.1) > data[1](0, 0) > bias(1, -0.1)]
> AND(1, 1) = 1 > [data[0](1, 0.2) > data[1](1, 0.1) > bias(1, 0)]
> AND(0, 0) = 0 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
> AND(1, 0) = 0 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
> AND(1, 0) = 0 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
> AND(1, 0) = 0 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
> AND(1, 0) = 0 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
> AND(0, 0) = 0 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
> AND(1, 0) = 0 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
> AND(0, 0) = 0 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, -0.1)]
AND trained with [21] interactions. [data[0](1, 0.1) > data[1](1, 0.1) > bias(1, -0.1)]
AND(0, 0) = 0
AND(0, 1) = 0
AND(1, 0) = 0
AND(1, 1) = 1
Training OR...
> OR(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, 0.1)]
> OR(0, 1) = 1 > [data[0](0, 0.1) > data[1](1, 0.1) > bias(1, 0.1)]
> OR(0, 1) = 1 > [data[0](0, 0.1) > data[1](1, 0.1) > bias(1, 0.1)]
> OR(0, 0) = 1 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, 0.1)]
> OR(0, 0) = 1 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, 0.1)]
> OR(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, 0.1)]
> OR(0, 1) = 1 > [data[0](0, 0.1) > data[1](1, 0.1) > bias(1, 0.1)]
> OR(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, 0)]
> OR(0, 0) = 0 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, 0)]
> OR(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, 0)]
> OR(0, 0) = 0 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, 0)]
> OR(0, 0) = 0 > [data[0](0, 0.1) > data[1](0, 0.1) > bias(1, 0)]
> OR(1, 1) = 1 > [data[0](1, 0.1) > data[1](1, 0.1) > bias(1, 0)]
> OR(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, 0)]
> OR(1, 0) = 1 > [data[0](1, 0.1) > data[1](0, 0.1) > bias(1, 0)]
OR trained with [15] interactions. [data[0](1, 0.1) > data[1](1, 0.1) > bias(1, 0)]
OR(0, 0) = 0
OR(0, 1) = 1
OR(1, 0) = 1
OR(1, 1) = 1
Training NOT...
> NOT(0) = 0 > [data[0](0, 0) > bias(1, 0)]
> NOT(1) = 1 > [data[0](1, 0) > bias(1, 0.1)]
> NOT(0) = 1 > [data[0](0, 0) > bias(1, 0.1)]
> NOT(1) = 1 > [data[0](1, 0) > bias(1, 0.1)]
> NOT(0) = 0 > [data[0](0, -0.1) > bias(1, 0)]
> NOT(1) = 1 > [data[0](1, -0.2) > bias(1, -0.1)]
> NOT(1) = 1 > [data[0](1, -0.2) > bias(1, -0.1)]
> NOT(0) = 1 > [data[0](0, -0.2) > bias(1, -0.1)]
> NOT(0) = 1 > [data[0](0, -0.30000000000000004) > bias(1, -0.2)]
> NOT(1) = 1 > [data[0](1, -0.30000000000000004) > bias(1, -0.2)]
> NOT(0) = 1 > [data[0](0, -0.30000000000000004) > bias(1, -0.2)]
> NOT(1) = 1 > [data[0](1, -0.4) > bias(1, -0.30000000000000004)]
> NOT(1) = 1 > [data[0](1, -0.5) > bias(1, -0.4)]
> NOT(1) = 1 > [data[0](1, -0.5) > bias(1, -0.4)]
> NOT(1) = 1 > [data[0](1, -0.6) > bias(1, -0.5)]
> NOT(1) = 1 > [data[0](1, -0.6) > bias(1, -0.5)]
> NOT(1) = 1 > [data[0](1, -0.7) > bias(1, -0.6)]
> NOT(1) = 1 > [data[0](1, -0.7999999999999999) > bias(1, -0.7)]
> NOT(0) = 1 > [data[0](0, -0.8999999999999999) > bias(1, -0.7999999999999999)]
> NOT(0) = 1 > [data[0](0, -0.8999999999999999) > bias(1, -0.7999999999999999)]
> NOT(0) = 1 > [data[0](0, -0.9999999999999999) > bias(1, -0.8999999999999999)]
> NOT(0) = 1 > [data[0](0, -0.9999999999999999) > bias(1, -0.8999999999999999)]
> NOT(1) = 1 > [data[0](1, -0.9999999999999999) > bias(1, -0.8999999999999999)]
> NOT(0) = 1 > [data[0](0, -0.9999999999999999) > bias(1, -0.8999999999999999)]
> NOT(0) = 1 > [data[0](0, -1.0999999999999999) > bias(1, -0.9999999999999999)]
> NOT(1) = 1 > [data[0](1, -1.2) > bias(1, -1.0999999999999999)]
> NOT(0) = 1 > [data[0](0, -1.2) > bias(1, -1.0999999999999999)]
> NOT(1) = 1 > [data[0](1, -1.2) > bias(1, -1.0999999999999999)]
> NOT(0) = 1 > [data[0](0, -1.2) > bias(1, -1.0999999999999999)]
> NOT(0) = 1 > [data[0](0, -1.2) > bias(1, -1.0999999999999999)]
> NOT(1) = 1 > [data[0](1, -1.2) > bias(1, -1.0999999999999999)]
> NOT(1) = 1 > [data[0](1, -1.3) > bias(1, -1.2)]
> NOT(0) = 1 > [data[0](0, -1.4000000000000001) > bias(1, -1.3)]
> NOT(0) = 1 > [data[0](0, -1.5000000000000002) > bias(1, -1.4000000000000001)]
> NOT(1) = 1 > [data[0](1, -1.6000000000000003) > bias(1, -1.5000000000000002)]
> NOT(1) = 1 > [data[0](1, -1.6000000000000003) > bias(1, -1.5000000000000002)]
> NOT(0) = 1 > [data[0](0, -1.6000000000000003) > bias(1, -1.5000000000000002)]
> NOT(0) = 1 > [data[0](0, -1.7000000000000004) > bias(1, -1.6000000000000003)]
> NOT(0) = 1 > [data[0](0, -1.8000000000000005) > bias(1, -1.7000000000000004)]
> NOT(1) = 1 > [data[0](1, -1.9000000000000006) > bias(1, -1.8000000000000005)]
> NOT(1) = 1 > [data[0](1, -1.9000000000000006) > bias(1, -1.8000000000000005)]
> NOT(1) = 1 > [data[0](1, -1.9000000000000006) > bias(1, -1.8000000000000005)]
> NOT(1) = 1 > [data[0](1, -1.9000000000000006) > bias(1, -1.8000000000000005)]
> NOT(0) = 1 > [data[0](0, -2.0000000000000004) > bias(1, -1.9000000000000006)]
> NOT(1) = 1 > [data[0](1, -2.1000000000000005) > bias(1, -2.0000000000000004)]
> NOT(1) = 1 > [data[0](1, -2.2000000000000006) > bias(1, -2.1000000000000005)]
> NOT(1) = 1 > [data[0](1, -2.3000000000000007) > bias(1, -2.2000000000000006)]
> NOT(0) = 1 > [data[0](0, -2.3000000000000007) > bias(1, -2.2000000000000006)]
> NOT(0) = 1 > [data[0](0, -2.400000000000001) > bias(1, -2.3000000000000007)]
> NOT(0) = 1 > [data[0](0, -2.500000000000001) > bias(1, -2.400000000000001)]
> NOT(1) = 1 > [data[0](1, -2.600000000000001) > bias(1, -2.500000000000001)]
> NOT(0) = 1 > [data[0](0, -2.700000000000001) > bias(1, -2.600000000000001)]
> NOT(1) = 1 > [data[0](1, -2.800000000000001) > bias(1, -2.700000000000001)]
> NOT(0) = 1 > [data[0](0, -2.9000000000000012) > bias(1, -2.800000000000001)]
> NOT(1) = 1 > [data[0](1, -3.0000000000000013) > bias(1, -2.9000000000000012)]
> NOT(1) = 1 > [data[0](1, -3.0000000000000013) > bias(1, -2.9000000000000012)]
> NOT(1) = 1 > [data[0](1, -3.0000000000000013) > bias(1, -2.9000000000000012)]
> NOT(0) = 1 > [data[0](0, -3.1000000000000014) > bias(1, -3.0000000000000013)]
> NOT(0) = 1 > [data[0](0, -3.1000000000000014) > bias(1, -3.0000000000000013)]
> NOT(1) = 1 > [data[0](1, -3.2000000000000015) > bias(1, -3.1000000000000014)]
> NOT(0) = 1 > [data[0](0, -3.3000000000000016) > bias(1, -3.2000000000000015)]
> NOT(1) = 1 > [data[0](1, -3.4000000000000017) > bias(1, -3.3000000000000016)]
> NOT(0) = 1 > [data[0](0, -3.5000000000000018) > bias(1, -3.4000000000000017)]
> NOT(0) = 1 > [data[0](0, -3.600000000000002) > bias(1, -3.5000000000000018)]
> NOT(1) = 1 > [data[0](1, -3.700000000000002) > bias(1, -3.600000000000002)]
> NOT(1) = 1 > [data[0](1, -3.700000000000002) > bias(1, -3.600000000000002)]
> NOT(1) = 1 > [data[0](1, -3.800000000000002) > bias(1, -3.700000000000002)]
> NOT(0) = 1 > [data[0](0, -3.800000000000002) > bias(1, -3.700000000000002)]
> NOT(1) = 1 > [data[0](1, -3.900000000000002) > bias(1, -3.800000000000002)]
> NOT(1) = 1 > [data[0](1, -4.000000000000002) > bias(1, -3.900000000000002)]
> NOT(1) = 1 > [data[0](1, -4.000000000000002) > bias(1, -3.900000000000002)]
> NOT(0) = 1 > [data[0](0, -4.000000000000002) > bias(1, -3.900000000000002)]
> NOT(0) = 1 > [data[0](0, -4.000000000000002) > bias(1, -3.900000000000002)]
> NOT(1) = 1 > [data[0](1, -4.100000000000001) > bias(1, -4.000000000000002)]
> NOT(1) = 1 > [data[0](1, -4.100000000000001) > bias(1, -4.000000000000002)]
> NOT(1) = 1 > [data[0](1, -4.200000000000001) > bias(1, -4.100000000000001)]
> NOT(0) = 1 > [data[0](0, -4.300000000000001) > bias(1, -4.200000000000001)]
> NOT(1) = 1 > [data[0](1, -4.300000000000001) > bias(1, -4.200000000000001)]
> NOT(1) = 1 > [data[0](1, -4.4) > bias(1, -4.300000000000001)]
> NOT(0) = 1 > [data[0](0, -4.5) > bias(1, -4.4)]
> NOT(0) = 1 > [data[0](0, -4.5) > bias(1, -4.4)]
> NOT(0) = 1 > [data[0](0, -4.5) > bias(1, -4.4)]
> NOT(0) = 1 > [data[0](0, -4.6) > bias(1, -4.5)]
> NOT(1) = 1 > [data[0](1, -4.699999999999999) > bias(1, -4.6)]
> NOT(0) = 1 > [data[0](0, -4.799999999999999) > bias(1, -4.699999999999999)]
> NOT(1) = 1 > [data[0](1, -4.799999999999999) > bias(1, -4.699999999999999)]
> NOT(0) = 1 > [data[0](0, -4.899999999999999) > bias(1, -4.799999999999999)]
> NOT(0) = 1 > [data[0](0, -4.999999999999998) > bias(1, -4.899999999999999)]
> NOT(0) = 1 > [data[0](0, -5.099999999999998) > bias(1, -4.999999999999998)]
> NOT(0) = 1 > [data[0](0, -5.1999999999999975) > bias(1, -5.099999999999998)]
> NOT(0) = 1 > [data[0](0, -5.299999999999997) > bias(1, -5.1999999999999975)]
> NOT(0) = 1 > [data[0](0, -5.299999999999997) > bias(1, -5.1999999999999975)]
> NOT(0) = 1 > [data[0](0, -5.299999999999997) > bias(1, -5.1999999999999975)]
> NOT(1) = 1 > [data[0](1, -5.299999999999997) > bias(1, -5.1999999999999975)]
> NOT(0) = 1 > [data[0](0, -5.299999999999997) > bias(1, -5.1999999999999975)]
> NOT(0) = 1 > [data[0](0, -5.299999999999997) > bias(1, -5.1999999999999975)]
> NOT(0) = 1 > [data[0](0, -5.399999999999997) > bias(1, -5.299999999999997)]
> NOT(0) = 1 > [data[0](0, -5.4999999999999964) > bias(1, -5.399999999999997)]
> NOT(1) = 1 > [data[0](1, -5.599999999999996) > bias(1, -5.4999999999999964)]
> NOT(0) = 1 > [data[0](0, -5.699999999999996) > bias(1, -5.599999999999996)]
> NOT(1) = 1 > [data[0](1, -5.799999999999995) > bias(1, -5.699999999999996)]
> NOT(0) = 1 > [data[0](0, -5.899999999999995) > bias(1, -5.799999999999995)]
> NOT(0) = 1 > [data[0](0, -5.999999999999995) > bias(1, -5.899999999999995)]
> NOT(0) = 1 > [data[0](0, -6.099999999999994) > bias(1, -5.999999999999995)]
> NOT(1) = 1 > [data[0](1, -6.199999999999994) > bias(1, -6.099999999999994)]
> NOT(0) = 1 > [data[0](0, -6.199999999999994) > bias(1, -6.099999999999994)]
> NOT(1) = 1 > [data[0](1, -6.199999999999994) > bias(1, -6.099999999999994)]
> NOT(1) = 1 > [data[0](1, -6.199999999999994) > bias(1, -6.099999999999994)]
> NOT(0) = 1 > [data[0](0, -6.199999999999994) > bias(1, -6.099999999999994)]
> NOT(1) = 1 > [data[0](1, -6.199999999999994) > bias(1, -6.099999999999994)]
> NOT(0) = 1 > [data[0](0, -6.199999999999994) > bias(1, -6.099999999999994)]
> NOT(1) = 1 > [data[0](1, -6.299999999999994) > bias(1, -6.199999999999994)]
> NOT(0) = 1 > [data[0](0, -6.399999999999993) > bias(1, -6.299999999999994)]

在@Stanislav Kralin之后,我再次更新了问题,因此它显示了问题。这是解决方案。

问题出在CALC函数上,该函数应将权重的输入值相乘。但我正在添加它。

不幸的是,我太专注于寻找我是否应该使用sigmoid函数或其他函数,寻找学习率以及线性和非线性函数,我没有看到这个错误。

ANDOR感知器配合良好的事实确实让我走向了错误的方向。

PerceptronData.prototype.calc = function () {
//var result = this.input + this.weight;//This was wrong... :(
var result = this.input * this.weight;
return result;
};

最新更新