Property Name | Property Description | Example | Explanation |
---|---|---|---|
mainAxisAlignment | Specifies how the children should be vertically aligned within a column. | MainAxisAlignment.start |
Aligns the children to the top of the column. |
crossAxisAlignment | Specifies how the children should be horizontally aligned within a column. | CrossAxisAlignment.center |
Aligns the children to th |
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# Elbow Curve Method for finding number of cluster(K) for clustering. | |
# Taking initially range is from (1,11). | |
x = df.iloc[:,[0,1,2,3]].values | |
wcss = [] | |
for i in range(1,11): # we are taking 1,10 values as initial centroids. | |
kmeans = KMeans(n_clusters = i, init = 'k-means++',max_iter = 300, n_init = 10, random_state = 0) |