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Improved variable scoping [skip ci]
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@@ -167,7 +167,6 @@ ElkanKmeans(Relation index, VectorArray samples, VectorArray centers)
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Oid collation;
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Oid collation;
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Vector *vec;
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Vector *vec;
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Vector *newCenter;
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Vector *newCenter;
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int iteration;
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int64 j;
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int64 j;
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int64 k;
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int64 k;
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int dimensions = centers->dim;
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int dimensions = centers->dim;
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@@ -181,8 +180,6 @@ ElkanKmeans(Relation index, VectorArray samples, VectorArray centers)
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float *s;
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float *s;
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float *halfcdist;
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float *halfcdist;
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float *newcdist;
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float *newcdist;
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int changes;
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double minDistance;
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int closestCenter;
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int closestCenter;
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double distance;
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double distance;
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bool rj;
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bool rj;
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@@ -246,7 +243,8 @@ ElkanKmeans(Relation index, VectorArray samples, VectorArray centers)
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/* Assign each x to its closest initial center c(x) = argmin d(x,c) */
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/* Assign each x to its closest initial center c(x) = argmin d(x,c) */
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for (j = 0; j < numSamples; j++)
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for (j = 0; j < numSamples; j++)
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{
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{
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minDistance = DBL_MAX;
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double minDistance = DBL_MAX;
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closestCenter = 0;
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closestCenter = 0;
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/* Find closest center */
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/* Find closest center */
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@@ -267,13 +265,13 @@ ElkanKmeans(Relation index, VectorArray samples, VectorArray centers)
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}
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}
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/* Give 500 iterations to converge */
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/* Give 500 iterations to converge */
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for (iteration = 0; iteration < 500; iteration++)
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for (int iteration = 0; iteration < 500; iteration++)
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{
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{
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int changes = 0;
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/* Can take a while, so ensure we can interrupt */
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/* Can take a while, so ensure we can interrupt */
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CHECK_FOR_INTERRUPTS();
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CHECK_FOR_INTERRUPTS();
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changes = 0;
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/* Step 1: For all centers, compute distance */
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/* Step 1: For all centers, compute distance */
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for (j = 0; j < numCenters; j++)
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for (j = 0; j < numCenters; j++)
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{
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{
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@@ -290,7 +288,7 @@ ElkanKmeans(Relation index, VectorArray samples, VectorArray centers)
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/* For all centers c, compute s(c) */
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/* For all centers c, compute s(c) */
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for (j = 0; j < numCenters; j++)
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for (j = 0; j < numCenters; j++)
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{
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{
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minDistance = DBL_MAX;
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double minDistance = DBL_MAX;
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for (k = 0; k < numCenters; k++)
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for (k = 0; k < numCenters; k++)
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{
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{
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