setup
This commit is contained in:
commit
642e4203a0
49
m.js
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49
m.js
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const M =
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{
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Iterate:
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{
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New(inDimensions, inCount, inFunction)
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{
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let row, i, outputCloud, outputVector;
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outputCloud = [];
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for(row=0; row<inCount; row++)
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{
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outputVector = [];
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for(i=0; i<inDimensions; i++)
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{
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outputVector.push(inFunction(i, row, outputVector));
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}
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outputCloud.push(outputVector);
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}
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return outputCloud;
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},
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Old(inCloud, inFunction)
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{
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return M.Iterate.New(inCloud[0].length, inCloud.length, inFunction);
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}
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},
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Create:
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{
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Box: (inV1, inV2, inCount)=> M.Iterate.New(inV1.length, inCount, (i, row)=> inV1[i]+(inV2[i]-inV1[i])*Math.random()),
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Transpose: (inCloud)=> M.Iterate.New(inCloud.length, inCloud[0].length, (i, row)=> inCloud[i][row]),
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Outer: (inV1, inV2)=> M.Iterate.New(inV1.length, inV2.length, (i, row)=> inV1[i]*inV2[row]),
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Clone: (inCloud)=> M.Iterate.Old(inCloud, (i, row)=> inCloud[row][i])
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},
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Mutate:
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{
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Pad: inCloud=> inCloud.forEach(row=> row.push(1)),
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Unpad: inCloud=> inCloud.forEach(row=> row.pop())
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},
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Single:
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{
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Affine: (inV, inMatrix)=> inMatrix.map(row=> row.reduce((sum, current, index)=> sum + current*inV[index]))
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},
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Batch:
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{
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Affine: (inCloud, inMatrix)=> inCloud.map(row=> M.Single.Affine(row, inMatrix)),
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Sigmoid: (inCloud)=> M.Iterate.Old(inCloud, i=>1/(1+Math.Pow(Math.E, i))),
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Derivative: (inCloud)=> M.Iterate.Old(inCloud, i=>i*(1-i))
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}
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}
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export default M;
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107
m.test.js
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107
m.test.js
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import { assert, assertEquals } from "https://deno.land/std@0.102.0/testing/asserts.ts";
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import { default as M } from "./m.js";
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Deno.test("Iterate.New", ()=>
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{
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let dimensions = 3;
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let count = 4;
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let cloud = M.Iterate.New(dimensions, count, (i, j)=>i+j);
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assertEquals(cloud.length, count, "correct count");
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assertEquals(cloud[0].length, dimensions, "correct dimensions");
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assertEquals(cloud[0][0], 0);
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assertEquals(cloud[3][2], 5, "correct output");
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});
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Deno.test("Create.Box", ()=>
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{
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let min = [-1, -2, -3];
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let max = [1, 2, 3];
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let count = 10;
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let box = M.Create.Box(min, max, count);
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assertEquals(box.length, count, "correct count");
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for(let i=0; i<box.length; i++)
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{
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assertEquals(box[i].length, min.length, "correct dimensions");
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for(let j=0; j<box[i].length; j++)
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{
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assert(box[i][j] >= min[j], true);
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assert(box[i][j] <= max[j], true, "correct range");
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}
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}
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});
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Deno.test("Create.Transpose", ()=>
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{
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let v1 = [1, 2, 3];
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let v2 = [4, 5, 6];
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let tpose = M.Create.Transpose([v1, v2]);
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assertEquals(tpose.length, 3, "correct count");
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assertEquals(tpose[0].length, 2, "correct dimensions");
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assertEquals(tpose[0][0], v1[0]);
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assertEquals(tpose[0][1], v2[0], "correct placement");
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});
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Deno.test("Create.Outer", ()=>
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{
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let v1 = [1, 2, 3];
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let v2 = [4, 5];
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let outer = M.Create.Outer(v1, v2);
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assertEquals(outer.length, v2.length, "correct count");
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assertEquals(outer[0].length, v1.length, "correct dimensions");
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assertEquals(outer[1][0], v1[0]*v2[1], "correct placement")
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});
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Deno.test("Create.Clone", ()=>
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{
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let v1 = [1, 2, 3];
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let v2 = [4, 5, 6];
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let clone = M.Create.Clone([v1, v2]);
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assertEquals(clone.length, 2, "correct count");
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assertEquals(clone[0].length, v1.length, "correct dimensions");
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assertEquals(clone[1][0], v2[0], "correct placement");
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});
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Deno.test("Mutate.Pad", ()=>
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{
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let matrix = [
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[1, 2, 3],
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[4, 5, 6]
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];
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M.Mutate.Pad(matrix);
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assertEquals(matrix.length, 2, "correct count");
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assertEquals(matrix[0].length, 4, "correct dimensions");
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assertEquals(matrix[0][3], 1, "correct placement");
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});
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Deno.test("Mutate.Unpad", ()=>
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{
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let matrix = [
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[1, 2, 3, 1],
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[4, 5, 6, 1]
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];
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M.Mutate.Unpad(matrix);
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assertEquals(matrix.length, 2, "correct count");
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assertEquals(matrix[0].length, 3, "correct dimensions");
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assertEquals(matrix[1][0], 4, "correct placement");
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});
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Deno.test("Single.Affine", ()=>
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{
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let v = [1, 2];
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let m = [[0.1, 0.2], [0.3, 0.4]];
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let t = M.Single.Affine(v, m);
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assertEquals(t.length, 2, "correct dimensions");
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assertEquals(t[0], 0.5)
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assertEquals(t[1], 1.1, "correct placement");
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});
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Deno.test("Batch.Affine", ()=>
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{
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let c = [[1, 2], [3, 4]];
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let m = [[0.1, 0.2], [0.3, 0.4]];
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let t = M.Batch.Affine(c, m);
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assertEquals(t.length, 2, "correct count");
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assertEquals(t[0].length, 2, "correct dimensions")
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assertEquals(t[0][1], 1.1, "correct placement");
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});
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17
methods.md
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17
methods.md
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box(boundingBox, count) // done
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transpose(inMatrix) // done
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outer(inv1, inv2) // done
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clone(inCloud) // done
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pad(inCloud) // done
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unpad(inCloud) // done
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// batch filter
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transform(inCloud, inMatrix) // done
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sigmoid(inCloud) // 1/(1+e^x) //
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derivative(inCloud) // x*(1-x)
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scale(inCloud1, inV)
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// batch of pairs
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subtract(inCloud1, inCloud2)
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multiply(inCloud1, inCloud2)
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211
nn.js
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nn.js
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var NN = {};
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NN.TrainingSet = {};
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NN.TrainingSet.Instances = [];
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NN.TrainingSet.Create = function()
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{
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var obj = {};
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obj.Input = [];
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obj.Output = [];
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obj.Order = [];
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NN.TrainingSet.Instances.push(obj);
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return obj;
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};
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NN.TrainingSet.AddPoint = function(inTrainingSet, inType, inData)
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{
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inTrainingSet.Input.push(inData);
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inTrainingSet.Output.push(inType);
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inTrainingSet.Order.push(inTrainingSet.Order.length);
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};
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NN.TrainingSet.AddCloud = function(inTrainingSet, inLabel, inCloud)
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{
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var i;
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for(i=0; i<inCloud.length; i++)
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{
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NN.TrainingSet.AddPoint(inTrainingSet, inLabel, inCloud[i]);
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}
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};
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NN.TrainingSet.Randomize = function(inTrainingSet)
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{
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var newOrder = [];
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var selection;
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while(inTrainingSet.Order.length != 0)
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{
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selection = Math.floor(inTrainingSet.Order.length * Math.random());
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inTrainingSet.Order.splice(selection, 1);
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newOrder.push(selection);
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}
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inTrainingSet.Order = newOrder;
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};
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NN.Layer = {};
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NN.Layer.Create = function(sizeIn, sizeOut)
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{
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var i;
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var min = [];
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var max = [];
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var obj = {};
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sizeIn++;
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obj.Forward = {};
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for(i=0; i<sizeIn; i++)
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{
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min.push(-1);
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max.push(1);
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}
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obj.Forward.Matrix = M.Box([min, max], sizeOut);
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obj.Forward.StageInput = [];
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obj.Forward.StageAffine = [];
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obj.Forward.StageSigmoid = [];
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obj.Forward.StageDerivative = [];
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obj.Backward = {};
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obj.Backward.Matrix = M.Transpose(obj.Forward.Matrix);
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obj.Backward.StageInput = [];
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obj.Backward.StageDerivative = [];
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obj.Backward.StageAffine = [];
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return obj;
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};
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NN.Layer.Forward = function(inLayer, inInput)
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{
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inLayer.Forward.StageInput = M.Pad(inInput); // Pad the input
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inLayer.Forward.StageAffine = M.Transform(inLayer.Forward.Matrix, inLayer.Forward.StageInput);
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inLayer.Forward.StageSigmoid = M.Sigmoid(inLayer.Forward.StageAffine);
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return inLayer.Forward.StageSigmoid;
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};
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NN.Layer.Error = function(inLayer, inTarget)
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{
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return M.Subtract(inLayer.Forward.StageSigmoid, inTarget);
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};
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NN.Layer.Backward = function(inLayer, inInput)
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{
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/* We need the derivative of the forward pass, but only during the backward pass.
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That's why-- even though it "belongs" to the forward pass-- it is being calculated here. */
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inLayer.Forward.StageDerivative = M.Derivative(inLayer.Forward.StageSigmoid);
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/* This transpose matrix is for sending the error back to a previous layer.
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And again, even though it is derived directly from the forward matrix, it is only needed during the backward pass so we calculate it here.*/
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inLayer.Backward.Matrix = M.Transpose(inLayer.Forward.Matrix);
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/* When the error vector arrives at a layer, it always needs to be multiplied (read 'supressed') by the derivative of
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what the layer output earlier during the forward pass.
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So despite its name, Backward.StageDerivative contains the result of this *multiplication* and not some new derivative calculation.*/
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inLayer.Backward.StageInput = inInput;
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inLayer.Backward.StageDerivative = M.Multiply(inLayer.Backward.StageInput, inLayer.Forward.StageDerivative);
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inLayer.Backward.StageAffine = M.Transform(inLayer.Backward.Matrix, inLayer.Backward.StageDerivative);
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return M.Unpad(inLayer.Backward.StageAffine);// Unpad the output
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};
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NN.Layer.Adjust = function(inLayer, inLearningRate)
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{
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var deltas;
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var vector;
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var scalar;
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var i, j;
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for(i=0; i<inLayer.Forward.StageInput.length; i++)
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{
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deltas = M.Outer(inLayer.Forward.StageInput[i], inLayer.Backward.StageDerivative[i]);
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deltas = M.Scale(deltas, inLearningRate);
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inLayer.Forward.Matrix = M.Subtract(inLayer.Forward.Matrix, deltas);
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}
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};
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NN.Layer.Stochastic = function(inLayer, inTrainingSet, inIterations)
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{
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/* this method is ONLY for testing individual layers, and does not translate to network-level training */
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var i, j;
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var current;
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var error;
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for(i=0; i<inIterations; i++)
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{
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NN.TrainingSet.Randomize(inTrainingSet);
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for(j=0; j<inTrainingSet.Order.length; j++)
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{
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current = inTrainingSet.Order[j];
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NN.Layer.Forward(inLayer, [inTrainingSet.Input[current]]);
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error = M.Subtract(inLayer.Forward.StageSigmoid, [inTrainingSet.Output[current]]);
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NN.Layer.Backward(inLayer, error);
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NN.Layer.Adjust(inLayer, 0.1);
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}
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}
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};
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NN.Network = {};
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NN.Network.Instances = [];
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NN.Network.Create = function()
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|
{
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|
var obj = {};
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var i;
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|
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obj.Layers = [];
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obj.LearningRate = 0.8;
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obj.Error = [];
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|
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for(i=0; i<arguments.length-1; i++)
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{
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obj.Layers.push(NN.Layer.Create(arguments[i], arguments[i+1]));
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}
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NN.Network.Instances.push(obj);
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return obj;
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|
};
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NN.Network.Observe = function(inNetwork, inBatch)
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{
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var input = M.Clone(inBatch);
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var i;
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for(i=0; i<inNetwork.Layers.length; i++)
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{
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input = NN.Layer.Forward(inNetwork.Layers[i], input);
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|
}
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return inNetwork.Layers[inNetwork.Layers.length-1].Forward.StageSigmoid;
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};
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NN.Network.Error = function(inNetwork, inTraining)
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|
{
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return M.Subtract(inNetwork.Layers[inNetwork.Layers.length-1].Forward.StageSigmoid, inTraining);
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|
};
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NN.Network.Learn = function(inNetwork, inError)
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|
{
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var input = inError;
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var i;
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for(i=inNetwork.Layers.length-1; i>=0; i--)
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|
{
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input = NN.Layer.Backward(inNetwork.Layers[i], input);
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NN.Layer.Adjust(inNetwork.Layers[i], inNetwork.LearningRate);
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|
}
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|
};
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|
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|
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NN.Network.Batch = function(inNetwork, inTrainingSet, inIterations)
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|
{
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var i;
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for(i=0; i<inIterations; i++)
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||||||
|
{
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NN.Network.Observe(inNetwork, inTrainingSet.Input);
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inNetwork.Error = NN.Network.Error(inNetwork, inTrainingSet.Output)
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|
NN.Network.Learn(inNetwork, inNetwork.Error);
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|
}
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|
};
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|
NN.Network.Stochastic = function(inNetwork, inTrainingSet, inIterations)
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|
{
|
||||||
|
var i, j;
|
||||||
|
var current;
|
||||||
|
|
||||||
|
for(i=0; i<inIterations; i++)
|
||||||
|
{
|
||||||
|
NN.TrainingSet.Randomize(inTrainingSet);
|
||||||
|
for(j=0; j<inTrainingSet.Order.length; j++)
|
||||||
|
{
|
||||||
|
current = inTrainingSet.Order[j];
|
||||||
|
NN.Network.Observe(inNetwork, [inTrainingSet.Input[current]]);
|
||||||
|
inNetwork.Error = NN.Network.Error(inNetwork, [inTrainingSet.Output[current]]);
|
||||||
|
NN.Network.Learn(inNetwork, inNetwork.Error);
|
||||||
|
}
|
||||||
|
}
|
||||||
|
};
|
Loading…
Reference in New Issue
Block a user