Suppose you have some data and you compute a regression model to predict a single numeric value. You can compute Cook’s distance on each training data item. Cook’s distance is a number that is a measure of how sensitive the data item is on regression prediction model. A large Cook’s value (typically greater than 1.0) means the associated data item has large influence.
Cook’s distance is conceptually simple. First you compute a regression model (usually linear regression but the idea works for any model — nearest neighbors regression, quadratic regression, kernel ridge regression, etc.) Then for each data item, you compute another model without using the current data item. And then you compute the sum of the squared differences of predictions of the two models. If the sum is large, that means the current data item had a big effect on the prediction model.
To take into account different numbers of predictor variables, and the baseline mean squared error of the model that uses all training data, you normalize Cook’s value for a particular data item by dividing the sum of the squared differences by (rank * MSE) where rank is the number of predictor variables plus 1 (to account for the bias) and MSE is the mean squared error of the model trained on all the data items.

From the Wikipedia article on Cook’s Distance
I put together a Cook’s distances demo for linear regression, using raw C#. The output of the demo is:
Begin C# linear regression Cook's distances demo Loading synthetic train (200) and test (40) data Done First three train X: -0.1660 0.4406 -0.9998 -0.3953 -0.7065 0.0776 -0.1616 0.3704 -0.5911 0.7562 -0.9452 0.3409 -0.1654 0.1174 -0.7192 First three train y: 0.4840 0.1568 0.8054 Creating and training Linear Regression model Done Coefficients/weights: -0.2656 0.0333 -0.0454 0.0358 -0.1146 Bias/constant: 0.3619 Evaluating model Accuracy train (within 0.10) = 0.4600 Accuracy test (within 0.10) = 0.6500 MSE train = 0.0026 MSE test = 0.0020 Predicting for x = -0.1660 0.4406 -0.9998 -0.3953 -0.7065 Predicted y = 0.5329 Computing Cook's distances . . Done i = 0 Cook's dist = 0.0050 i = 2 Cook's dist = 0.0144 i = 3 Cook's dist = 0.0337 i = 4 Cook's dist = 0.0365 i = 18 Cook's dist = 0.0493 i = 97 Cook's dist = 0.0522 End demo
There are 200 training items. The largest Cook’s distance is 0.0522 which is associated with data item [97]. This is a small value (less than 1.0) and so the conclusion is that none of the training items has a significantly large effect on the regression model.
Cook’s distances aren’t used very often. For linear regression models, it’s much simpler to just identify outlier training data items — an outlier will have more impact than normal data items, and finding outliers is much easier than constructing a new regression model for each removed data item in the training dataset.

An artist named “Gill” produced airbrush art in the 1940s — maybe. There is literally nothing known about him — not even his first name. Here are three examples. They’re clearly very similar so it seems as if Gill’s main motivation was commercial, rather than artistic.
Demo program. Replace “lt” (less than), “gt”, “lte”, “gte” with Boolean operator symbols — my blog editor chokes on symbols.
using System;
using System.IO;
using System.Collections.Generic;
namespace LinearRegressionCooksDistances
{
internal class LinearRegressionCooksProgram
{
static void Main(string[] args)
{
Console.WriteLine("\nBegin C# linear regression" +
" Cook's distances demo ");
// 1. load data
Console.WriteLine("\nLoading synthetic train" +
" (200) and test (40) data");
string trainFile =
"..\\..\\..\\Data\\synthetic_train_200.txt";
int[] colsX = new int[] { 0, 1, 2, 3, 4 };
double[][] trainX =
MatLoad(trainFile, colsX, ',', "#");
double[] trainY =
MatToVec(MatLoad(trainFile,
new int[] { 5 }, ',', "#"));
string testFile =
"..\\..\\..\\Data\\synthetic_test_40.txt";
double[][] testX =
MatLoad(testFile, colsX, ',', "#");
double[] testY =
MatToVec(MatLoad(testFile,
new int[] { 5 }, ',', "#"));
Console.WriteLine("Done ");
Console.WriteLine("\nFirst three train X: ");
for (int i = 0; i "lt" 3; ++i)
VecShow(trainX[i], 4, 8);
Console.WriteLine("\nFirst three train y: ");
for (int i = 0; i "lt" 3; ++i)
Console.WriteLine(trainY[i].ToString("F4").
PadLeft(8));
// 2. create and train model using pseudo-inverse
Console.WriteLine("\nCreating and training" +
" Linear Regression model using closed-form ");
LinearRegressor model = new LinearRegressor();
model.TrainClosed(trainX, trainY);
Console.WriteLine("Done ");
// 2b. show model parameters
Console.WriteLine("\nCoefficients/weights: ");
for (int i = 0; i "lt" model.weights.Length; ++i)
Console.Write(model.weights[i].ToString("F4") + " ");
Console.WriteLine("\nBias/constant: " +
model.bias.ToString("F4"));
// 3. evaluate model
Console.WriteLine("\nEvaluating model ");
double accTrain = model.Accuracy(trainX, trainY, 0.10);
Console.WriteLine("\nAccuracy train (within 0.10) = " +
accTrain.ToString("F4"));
double accTest = model.Accuracy(testX, testY, 0.10);
Console.WriteLine("Accuracy test (within 0.10) = " +
accTest.ToString("F4"));
double mseTrain = model.MSE(trainX, trainY);
Console.WriteLine("\nMSE train = " +
mseTrain.ToString("F4"));
double mseTest = model.MSE(testX, testY);
Console.WriteLine("MSE test = " +
mseTest.ToString("F4"));
// 4. use model to predict first training item
double[] x = trainX[0];
Console.WriteLine("\nPredicting for x = ");
VecShow(x, 4, 9);
double predY = model.Predict(x);
Console.WriteLine("\nPredicted y = " +
predY.ToString("F4"));
// 5. compute Cook's distances for each train item
Console.WriteLine("\nComputing Cooks distances . . ");
double[] cooks = model.CooksDistances(trainX, trainY);
Console.WriteLine("Done ");
// 6. scan for largest Cook's value
double maxCook = -1.0;
for (int i = 0; i "lt" cooks.Length; ++i)
{
if (cooks[i] "gt" maxCook)
{
Console.WriteLine("i = " +
i.ToString().PadLeft(4) +
" Cook's dist = " + cooks[i].ToString("F4"));
maxCook = cooks[i];
}
}
Console.WriteLine("\nEnd demo ");
Console.ReadLine();
} // Main
// ------------------------------------------------------
// helpers for Main(): MatLoad(), MatToVec(), VecShow()
// ------------------------------------------------------
static double[][] MatLoad(string fn, int[] usecols,
char sep, string comment)
{
List"lt"double[]"gt" result =
new List"lt"double[]"gt"();
string line = "";
FileStream ifs = new FileStream(fn, FileMode.Open);
StreamReader sr = new StreamReader(ifs);
while ((line = sr.ReadLine()) != null)
{
if (line.StartsWith(comment) == true)
continue;
string[] tokens = line.Split(sep);
List"lt"double"gt" lst = new List"lt"double"gt"();
for (int j = 0; j "lt" usecols.Length; ++j)
lst.Add(double.Parse(tokens[usecols[j]]));
double[] row = lst.ToArray();
result.Add(row);
}
sr.Close(); ifs.Close();
return result.ToArray();
}
static double[] MatToVec(double[][] mat)
{
int nRows = mat.Length;
int nCols = mat[0].Length;
double[] result = new double[nRows * nCols];
int k = 0;
for (int i = 0; i "lt" nRows; ++i)
for (int j = 0; j "lt" nCols; ++j)
result[k++] = mat[i][j];
return result;
}
static void VecShow(double[] vec, int dec, int wid)
{
for (int i = 0; i "lt" vec.Length; ++i)
Console.Write(vec[i].ToString("F" + dec).
PadLeft(wid));
Console.WriteLine("");
}
} // class Program
// ========================================================
public class LinearRegressor
{
public double[] weights;
public double bias;
private Random rnd;
// ------------------------------------------------------
public LinearRegressor(int seed = 0) // ctor
{
this.weights = new double[0]; // happy compiler
this.bias = 0;
this.rnd = new Random(seed); // not used this version
}
// ------------------------------------------------------
public double Predict(double[] x)
{
double result = 0.0;
for (int j = 0; j "lt" x.Length; ++j)
result += x[j] * this.weights[j];
result += this.bias;
return result;
}
// ------------------------------------------------------
public void TrainClosed(double[][] trainX,
double[] trainY)
{
// pseudo-inverse via normal equations
// wts_bias = (inv(Xt * X) * Xt) * trainY
int dim = trainX[0].Length;
this.weights = new double[dim];
double[][] X = MatDesign(trainX);
double[][] Xinv = Cholesky.MatPseudoInv(X);
double[] biasAndWts =
MatVecProduct(Xinv, trainY);
// extract bias and weights
this.bias = biasAndWts[0];
for (int i = 1; i "lt" biasAndWts.Length; ++i)
this.weights[i - 1] = biasAndWts[i];
return; // all done
} // TrainClosed()
private static double[] MatVecProduct(double[][] A,
double[] v)
{
// helper for TrainClosed()
double[] result = new double[A.Length];
for (int i = 0; i "lt" A.Length; ++i)
for (int k = 0; k "lt" A[0].Length; ++k)
result[i] += A[i][k] * v[k];
return result;
}
// ------------------------------------------------------
private static double[][] MatDesign(double[][] M)
{
// helper for TrainClosed()
int nRows = M.Length; int nCols = M[0].Length;
double[][] result = new double[nRows][];
for (int i = 0; i "lt" nRows; ++i)
result[i] = new double[nCols + 1];
for (int i = 0; i "lt" nRows; ++i)
{
result[i][0] = 1.0;
for (int j = 1; j "lt" nCols + 1; ++j)
result[i][j] = M[i][j - 1];
}
return result;
}
// ------------------------------------------------------
public double Accuracy(double[][] dataX, double[] dataY,
double pctClose)
{
int numCorrect = 0; int numWrong = 0;
for (int i = 0; i "lt" dataX.Length; ++i)
{
double actualY = dataY[i];
double predY = this.Predict(dataX[i]);
if (Math.Abs(predY - actualY) "lt"
Math.Abs(pctClose * actualY))
++numCorrect;
else
++numWrong;
}
return (numCorrect * 1.0) / (numWrong + numCorrect);
}
// ------------------------------------------------------
public double MSE(double[][] dataX, double[] dataY)
{
int n = dataX.Length;
double sum = 0.0;
for (int i = 0; i "lt" n; ++i)
{
double actualY = dataY[i];
double predY = this.Predict(dataX[i]);
sum += (actualY - predY) * (actualY - predY);
}
return sum / n;
}
// ------------------------------------------------------
public double[] CooksDistances(double[][] trainX,
double[] trainY)
{
// return array of Cook's distances, one per train
// large value means large influence
double[] result = new double[trainX.Length];
// 1. train model using all data
var model = new LinearRegressor();
model.TrainClosed(trainX, trainY);
int rank = trainX[0].Length + 1; // add 1 for bias
double mse = model.MSE(trainX, trainY);
// 2. get Cook's dist for each train item
for (int i = 0; i "lt" trainX.Length; ++i)
{
// remove item i
double[][] X = RemoveRow(trainX, i);
double[] y = RemoveItem(trainY, i);
// train model without current item
var tmp = new LinearRegressor();
tmp.TrainClosed(X, y);
double sum = 0.0;
for (int j = 0; j "lt" trainX.Length; ++j)
{
double p1 = model.Predict(trainX[j]);
double p2 = tmp.Predict(trainX[j]);
sum += (p1 - p2) * (p1 - p2);
}
result[i] = sum / (rank * mse);
}
return result;
} // CooksDistances()
private static double[][] RemoveRow(double[][] dataX,
int row)
{
double[][] result = new double[dataX.Length - 1][];
for (int i = 0; i "lt" result.Length; ++i)
result[i] = new double[dataX.Length];
int k = 0; // points into result
for (int i = 0; i "lt" dataX.Length; ++i)
{
if (i == row) continue;
for (int j = 0; j "lt" dataX[0].Length; ++j)
{
result[k][j] = dataX[i][j];
}
++k;
}
return result;
}
private static double[] RemoveItem(double[] dataY,
int idx)
{
double[] result = new double[dataY.Length - 1];
int k = 0; // pts into result
for (int i = 0; i "lt" dataY.Length; ++i)
{
if (i == idx) continue;
result[k] = dataY[i];
++k;
}
return result;
}
} // class LinearRegressor
// ========================================================
public class Cholesky
{
// container class for MatPseudoInv()
public static double[][] MatPseudoInv(double[][] A)
{
// left pseudo-inverse via normal equations
// nRows must be gte nCols
// inv(At * A) * A
double[][] At = MatTranspose(A);
double[][] AtA = MatProduct(At, A);
for (int i = 0; i "lt" AtA.Length; ++i)
AtA[i][i] += 1.0e-8; /// condition before inv
double[][] AtAinv = MatInvCholesky(AtA);
double[][] pinv = MatProduct(AtAinv, At);
return pinv;
} // MatPseudoInv()
// ------------------------------------------------------
private static double[][] MatInvCholesky(double[][] A)
{
// A must be square, symmetric, positive definite
int m = A.Length; int n = A[0].Length; // m == n
// 1. decompose A to L
double[][] L = new double[n][];
for (int i = 0; i "lt" n; ++i)
L[i] = new double[n];
for (int i = 0; i "lt" n; ++i)
{
for (int j = 0; j "lte" i; ++j)
{
double sum = 0.0;
for (int k = 0; k "lt" j; ++k)
sum += L[i][k] * L[j][k];
if (i == j)
{
double tmp = A[i][i] - sum;
if (tmp "lt" 0.0)
throw new
Exception("decomp Cholesky fatal");
L[i][j] = Math.Sqrt(tmp);
}
else
{
if (L[j][j] == 0.0)
throw new
Exception("decomp Cholesky fatal ");
L[i][j] = (A[i][j] - sum) / L[j][j];
}
} // j
} // i
// 2. compute inverse from L
double[][] result = new double[n][]; // Identity
for (int i = 0; i "lt" n; ++i)
result[i] = new double[n];
for (int i = 0; i "lt" n; ++i)
result[i][i] = 1.0;
for (int k = 0; k "lt" n; ++k)
{
for (int j = 0; j "lt" n; j++)
{
for (int i = 0; i "lt" k; i++)
{
result[k][j] -= result[i][j] * L[k][i];
}
result[k][j] /= L[k][k];
}
}
for (int k = n - 1; k "gte" 0; --k)
{
for (int j = 0; j "lt" n; j++)
{
for (int i = k + 1; i "lt" n; i++)
{
result[k][j] -= result[i][j] * L[i][k];
}
result[k][j] /= L[k][k];
}
}
return result;
} // MatInvCholesky()
// ------------------------------------------------------
private static double[][] MatTranspose(double[][] M)
{
int nr = M.Length; int nc = M[0].Length;
double[][] result = new double[nc][]; // note
for (int i = 0; i "lt" nc; ++i)
result[i] = new double[nr];
for (int i = 0; i "lt" nr; ++i)
for (int j = 0; j "lt" nc; ++j)
result[j][i] = M[i][j]; // note
return result;
}
// ````````````````````````````````````````````````````
private static double[][] MatProduct(double[][] A,
double[][] B)
{
int aRows = A.Length; int aCols = A[0].Length;
int bRows = B.Length; int bCols = B[0].Length;
if (aCols != bRows)
throw new Exception("Non-conformable matrices");
double[][] result = new double[aRows][];
for (int i = 0; i "lt" aRows; ++i)
result[i] = new double[bCols];
for (int i = 0; i "lt" aRows; ++i) // each row of A
for (int j = 0; j "lt" bCols; ++j) // each col of B
for (int k = 0; k "lt" aCols; ++k)
result[i][j] += A[i][k] * B[k][j];
return result;
}
// ------------------------------------------------------
} // class Cholesky
} // ns
Training data:
# synthetic_train_200.txt # -0.1660, 0.4406, -0.9998, -0.3953, -0.7065, 0.4840 0.0776, -0.1616, 0.3704, -0.5911, 0.7562, 0.1568 -0.9452, 0.3409, -0.1654, 0.1174, -0.7192, 0.8054 0.9365, -0.3732, 0.3846, 0.7528, 0.7892, 0.1345 -0.8299, -0.9219, -0.6603, 0.7563, -0.8033, 0.7955 0.0663, 0.3838, -0.3690, 0.3730, 0.6693, 0.3206 -0.9634, 0.5003, 0.9777, 0.4963, -0.4391, 0.7377 -0.1042, 0.8172, -0.4128, -0.4244, -0.7399, 0.4801 -0.9613, 0.3577, -0.5767, -0.4689, -0.0169, 0.6861 -0.7065, 0.1786, 0.3995, -0.7953, -0.1719, 0.5569 0.3888, -0.1716, -0.9001, 0.0718, 0.3276, 0.2500 0.1731, 0.8068, -0.7251, -0.7214, 0.6148, 0.3297 -0.2046, -0.6693, 0.8550, -0.3045, 0.5016, 0.2129 0.2473, 0.5019, -0.3022, -0.4601, 0.7918, 0.2613 -0.1438, 0.9297, 0.3269, 0.2434, -0.7705, 0.5171 0.1568, -0.1837, -0.5259, 0.8068, 0.1474, 0.3307 -0.9943, 0.2343, -0.3467, 0.0541, 0.7719, 0.5581 0.2467, -0.9684, 0.8589, 0.3818, 0.9946, 0.1092 -0.6553, -0.7257, 0.8652, 0.3936, -0.8680, 0.7018 0.8460, 0.4230, -0.7515, -0.9602, -0.9476, 0.1996 -0.9434, -0.5076, 0.7201, 0.0777, 0.1056, 0.5664 0.9392, 0.1221, -0.9627, 0.6013, -0.5341, 0.1533 0.6142, -0.2243, 0.7271, 0.4942, 0.1125, 0.1661 0.4260, 0.1194, -0.9749, -0.8561, 0.9346, 0.2230 0.1362, -0.5934, -0.4953, 0.4877, -0.6091, 0.3810 0.6937, -0.5203, -0.0125, 0.2399, 0.6580, 0.1460 -0.6864, -0.9628, -0.8600, -0.0273, 0.2127, 0.5387 0.9772, 0.1595, -0.2397, 0.1019, 0.4907, 0.1611 0.3385, -0.4702, -0.8673, -0.2598, 0.2594, 0.2270 -0.8669, -0.4794, 0.6095, -0.6131, 0.2789, 0.4700 0.0493, 0.8496, -0.4734, -0.8681, 0.4701, 0.3516 0.8639, -0.9721, -0.5313, 0.2336, 0.8980, 0.1412 0.9004, 0.1133, 0.8312, 0.2831, -0.2200, 0.1782 0.0991, 0.8524, 0.8375, -0.2102, 0.9265, 0.2150 -0.6521, -0.7473, -0.7298, 0.0113, -0.9570, 0.7422 0.6190, -0.3105, 0.8802, 0.1640, 0.7577, 0.1056 0.6895, 0.8108, -0.0802, 0.0927, 0.5972, 0.2214 0.1982, -0.9689, 0.1870, -0.1326, 0.6147, 0.1310 -0.3695, 0.7858, 0.1557, -0.6320, 0.5759, 0.3773 -0.1596, 0.3581, 0.8372, -0.9992, 0.9535, 0.2071 -0.2468, 0.9476, 0.2094, 0.6577, 0.1494, 0.4132 0.1737, 0.5000, 0.7166, 0.5102, 0.3961, 0.2611 0.7290, -0.3546, 0.3416, -0.0983, -0.2358, 0.1332 -0.3652, 0.2438, -0.1395, 0.9476, 0.3556, 0.4170 -0.6029, -0.1466, -0.3133, 0.5953, 0.7600, 0.4334 -0.4596, -0.4953, 0.7098, 0.0554, 0.6043, 0.2775 0.1450, 0.4663, 0.0380, 0.5418, 0.1377, 0.2931 -0.8636, -0.2442, -0.8407, 0.9656, -0.6368, 0.7429 0.6237, 0.7499, 0.3768, 0.1390, -0.6781, 0.2185 -0.5499, 0.1850, -0.3755, 0.8326, 0.8193, 0.4399 -0.4858, -0.7782, -0.6141, -0.0008, 0.4572, 0.4197 0.7033, -0.1683, 0.2334, -0.5327, -0.7961, 0.1776 0.0317, -0.0457, -0.6947, 0.2436, 0.0880, 0.3345 0.5031, -0.5559, 0.0387, 0.5706, -0.9553, 0.3107 -0.3513, 0.7458, 0.6894, 0.0769, 0.7332, 0.3170 0.2205, 0.5992, -0.9309, 0.5405, 0.4635, 0.3532 -0.4806, -0.4859, 0.2646, -0.3094, 0.5932, 0.3202 0.9809, -0.3995, -0.7140, 0.8026, 0.0831, 0.1600 0.9495, 0.2732, 0.9878, 0.0921, 0.0529, 0.1289 -0.9476, -0.6792, 0.4913, -0.9392, -0.2669, 0.5966 0.7247, 0.3854, 0.3819, -0.6227, -0.1162, 0.1550 -0.5922, -0.5045, -0.4757, 0.5003, -0.0860, 0.5863 -0.8861, 0.0170, -0.5761, 0.5972, -0.4053, 0.7301 0.6877, -0.2380, 0.4997, 0.0223, 0.0819, 0.1404 0.9189, 0.6079, -0.9354, 0.4188, -0.0700, 0.1907 -0.1428, -0.7820, 0.2676, 0.6059, 0.3936, 0.2790 0.5324, -0.3151, 0.6917, -0.1425, 0.6480, 0.1071 -0.8432, -0.9633, -0.8666, -0.0828, -0.7733, 0.7784 -0.9444, 0.5097, -0.2103, 0.4939, -0.0952, 0.6787 -0.0520, 0.6063, -0.1952, 0.8094, -0.9259, 0.4836 0.5477, -0.7487, 0.2370, -0.9793, 0.0773, 0.1241 0.2450, 0.8116, 0.9799, 0.4222, 0.4636, 0.2355 0.8186, -0.1983, -0.5003, -0.6531, -0.7611, 0.1511 -0.4714, 0.6382, -0.3788, 0.9648, -0.4667, 0.5950 0.0673, -0.3711, 0.8215, -0.2669, -0.1328, 0.2677 -0.9381, 0.4338, 0.7820, -0.9454, 0.0441, 0.5518 -0.3480, 0.7190, 0.1170, 0.3805, -0.0943, 0.4724 -0.9813, 0.1535, -0.3771, 0.0345, 0.8328, 0.5438 -0.1471, -0.5052, -0.2574, 0.8637, 0.8737, 0.3042 -0.5454, -0.3712, -0.6505, 0.2142, -0.1728, 0.5783 0.6327, -0.6297, 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0.2215 -0.0242, 0.0513, -0.9430, 0.2885, -0.2987, 0.3947 -0.5416, -0.1322, -0.2351, -0.0604, 0.9590, 0.3683 0.1055, 0.7783, -0.2901, -0.5090, 0.8220, 0.2984 -0.9129, 0.9015, 0.1128, -0.2473, 0.9901, 0.4776 -0.9378, 0.1424, -0.6391, 0.2619, 0.9618, 0.5368 0.7498, -0.0963, 0.4169, 0.5549, -0.0103, 0.1614 -0.2612, -0.7156, 0.4538, -0.0460, -0.1022, 0.3717 0.7720, 0.0552, -0.1818, -0.4622, -0.8560, 0.1685 -0.4177, 0.0070, 0.9319, -0.7812, 0.3461, 0.3052 -0.0001, 0.5542, -0.7128, -0.8336, -0.2016, 0.3803 0.5356, -0.4194, -0.5662, -0.9666, -0.2027, 0.1776 -0.2378, 0.3187, -0.8582, -0.6948, -0.9668, 0.5474 -0.1947, -0.3579, 0.1158, 0.9869, 0.6690, 0.2992 0.3992, 0.8365, -0.9205, -0.8593, -0.0520, 0.3154 -0.0209, 0.0793, 0.7905, -0.1067, 0.7541, 0.1864 -0.4928, -0.4524, -0.3433, 0.0951, -0.5597, 0.6261 -0.8118, 0.7404, -0.5263, -0.2280, 0.1431, 0.6349 0.0516, -0.8480, 0.7483, 0.9023, 0.6250, 0.1959 -0.3212, 0.1093, 0.9488, -0.3766, 0.3376, 0.2735 -0.3481, 0.5490, -0.3484, 0.7797, 0.5034, 0.4379 -0.5785, -0.9170, -0.3563, -0.9258, 0.3877, 0.4121 0.3407, -0.1391, 0.5356, 0.0720, -0.9203, 0.3458 -0.3287, -0.8954, 0.2102, 0.0241, 0.2349, 0.3247 -0.1353, 0.6954, -0.0919, -0.9692, 0.7461, 0.3338 0.9036, -0.8982, -0.5299, -0.8733, -0.1567, 0.1187 0.7277, -0.8368, -0.0538, -0.7489, 0.5458, 0.0830 0.9049, 0.8878, 0.2279, 0.9470, -0.3103, 0.2194 0.7957, -0.1308, -0.5284, 0.8817, 0.3684, 0.2172 0.4647, -0.4931, 0.2010, 0.6292, -0.8918, 0.3371 -0.7390, 0.6849, 0.2367, 0.0626, -0.5034, 0.7039 -0.1567, -0.8711, 0.7940, -0.5932, 0.6525, 0.1710 0.7635, -0.0265, 0.1969, 0.0545, 0.2496, 0.1445 0.7675, 0.1354, -0.7698, -0.5460, 0.1920, 0.1728 -0.5211, -0.7372, -0.6763, 0.6897, 0.2044, 0.5217 0.1913, 0.1980, 0.2314, -0.8816, 0.5006, 0.1998 0.8964, 0.0694, -0.6149, 0.5059, -0.9854, 0.1825 0.1767, 0.7104, 0.2093, 0.6452, 0.7590, 0.2832 -0.3580, -0.7541, 0.4426, -0.1193, -0.7465, 0.5657 -0.5996, 0.5766, -0.9758, -0.3933, -0.9572, 0.6800 0.9950, 0.1641, -0.4132, 0.8579, 0.0142, 0.2003 -0.4717, -0.3894, -0.2567, -0.5111, 0.1691, 0.4266 0.3917, -0.8561, 0.9422, 0.5061, 0.6123, 0.1212 -0.0366, -0.1087, 0.3449, -0.1025, 0.4086, 0.2475 0.3633, 0.3943, 0.2372, -0.6980, 0.5216, 0.1925 -0.5325, -0.6466, -0.2178, -0.3589, 0.6310, 0.3568 0.2271, 0.5200, -0.1447, -0.8011, -0.7699, 0.3128 0.6415, 0.1993, 0.3777, -0.0178, -0.8237, 0.2181 -0.5298, -0.0768, -0.6028, -0.9490, 0.4588, 0.4356 0.6870, -0.1431, 0.7294, 0.3141, 0.1621, 0.1632 -0.5985, 0.0591, 0.7889, -0.3900, 0.7419, 0.2945 0.3661, 0.7984, -0.8486, 0.7572, -0.6183, 0.3449 0.6995, 0.3342, -0.3113, -0.6972, 0.2707, 0.1712 0.2565, 0.9126, 0.1798, -0.6043, -0.1413, 0.2893 -0.3265, 0.9839, -0.2395, 0.9854, 0.0376, 0.4770 0.2690, -0.1722, 0.9818, 0.8599, -0.7015, 0.3954 -0.2102, -0.0768, 0.1219, 0.5607, -0.0256, 0.3949 0.8216, -0.9555, 0.6422, -0.6231, 0.3715, 0.0801 -0.2896, 0.9484, -0.7545, -0.6249, 0.7789, 0.4370 -0.9985, -0.5448, -0.7092, -0.5931, 0.7926, 0.5402
Test data:
# synthetic_test_40.txt # 0.7462, 0.4006, -0.0590, 0.6543, -0.0083, 0.1935 0.8495, -0.2260, -0.0142, -0.4911, 0.7699, 0.1078 -0.2335, -0.4049, 0.4352, -0.6183, -0.7636, 0.5088 0.1810, -0.5142, 0.2465, 0.2767, -0.3449, 0.3136 -0.8650, 0.7611, -0.0801, 0.5277, -0.4922, 0.7140 -0.2358, -0.7466, -0.5115, -0.8413, -0.3943, 0.4533 0.4834, 0.2300, 0.3448, -0.9832, 0.3568, 0.1360 -0.6502, -0.6300, 0.6885, 0.9652, 0.8275, 0.3046 -0.3053, 0.5604, 0.0929, 0.6329, -0.0325, 0.4756 -0.7995, 0.0740, -0.2680, 0.2086, 0.9176, 0.4565 -0.2144, -0.2141, 0.5813, 0.2902, -0.2122, 0.4119 -0.7278, -0.0987, -0.3312, -0.5641, 0.8515, 0.4438 0.3793, 0.1976, 0.4933, 0.0839, 0.4011, 0.1905 -0.8568, 0.9573, -0.5272, 0.3212, -0.8207, 0.7415 -0.5785, 0.0056, -0.7901, -0.2223, 0.0760, 0.5551 0.0735, -0.2188, 0.3925, 0.3570, 0.3746, 0.2191 0.1230, -0.2838, 0.2262, 0.8715, 0.1938, 0.2878 0.4792, -0.9248, 0.5295, 0.0366, -0.9894, 0.3149 -0.4456, 0.0697, 0.5359, -0.8938, 0.0981, 0.3879 0.8629, -0.8505, -0.4464, 0.8385, 0.5300, 0.1769 0.1995, 0.6659, 0.7921, 0.9454, 0.9970, 0.2330 -0.0249, -0.3066, -0.2927, -0.4923, 0.8220, 0.2437 0.4513, -0.9481, -0.0770, -0.4374, -0.9421, 0.2879 -0.3405, 0.5931, -0.3507, -0.3842, 0.8562, 0.3987 0.9538, 0.0471, 0.9039, 0.7760, 0.0361, 0.1706 -0.0887, 0.2104, 0.9808, 0.5478, -0.3314, 0.4128 -0.8220, -0.6302, 0.0537, -0.1658, 0.6013, 0.4306 -0.4123, -0.2880, 0.9074, -0.0461, -0.4435, 0.5144 0.0060, 0.2867, -0.7775, 0.5161, 0.7039, 0.3599 -0.7968, -0.5484, 0.9426, -0.4308, 0.8148, 0.2979 0.7811, 0.8450, -0.6877, 0.7594, 0.2640, 0.2362 -0.6802, -0.1113, -0.8325, -0.6694, -0.6056, 0.6544 0.3821, 0.1476, 0.7466, -0.5107, 0.2592, 0.1648 0.7265, 0.9683, -0.9803, -0.4943, -0.5523, 0.2454 -0.9049, -0.9797, -0.0196, -0.9090, -0.4433, 0.6447 -0.4607, 0.1811, -0.2389, 0.4050, -0.0078, 0.5229 0.2664, -0.2932, -0.4259, -0.7336, 0.8742, 0.1834 -0.4507, 0.1029, -0.6294, -0.1158, -0.6294, 0.6081 0.8948, -0.0124, 0.9278, 0.2899, -0.0314, 0.1534 -0.1323, -0.8813, -0.0146, -0.0697, 0.6135, 0.2386

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