I am performing clustering on a dataset using PySpark. To find the number of clusters I performed clustering over a range of values (2,20) and found the `wsse`

(within-cluster sum of squares) values for each value of `k`

. This where I found something unusual. According to my understanding when you increase the number of clusters, the `wsse`

decreases monotonically. But results I got say otherwise. I 'm displaying `wsse`

for first few clusters only

```
Results from spark
For k = 002 WSSE is 255318.793358
For k = 003 WSSE is 209788.479560
For k = 004 WSSE is 208498.351074
For k = 005 WSSE is 142573.272672
For k = 006 WSSE is 154419.027612
For k = 007 WSSE is 115092.404604
For k = 008 WSSE is 104753.205635
For k = 009 WSSE is 98000.985547
For k = 010 WSSE is 95134.137071
```

If you look at the `wsse`

value of for `k=5`

and `k=6`

, you'll see the `wsse`

has increased. I turned to sklearn to see if I get similar results. The codes I used for spark and sklearn are in the appendix section towards the end of the post. I have tried to use same values for the parameters in spark and sklearn KMeans model. The following are the results from sklearn and they are as I expected them to be - monotonically decreasing.

```
Results from sklearn
For k = 002 WSSE is 245090.224247
For k = 003 WSSE is 201329.888159
For k = 004 WSSE is 166889.044195
For k = 005 WSSE is 142576.895154
For k = 006 WSSE is 123882.070776
For k = 007 WSSE is 112496.692455
For k = 008 WSSE is 102806.001664
For k = 009 WSSE is 95279.837212
For k = 010 WSSE is 89303.574467
```

I am not sure as to why I the `wsse`

values increase in Spark. I tried using different datasets and found similar behavior there as well. Is there someplace I am going wrong? Any clues would be great.

**APPENDIX**

The dataset is located here.

*Read the data and set declare variables*

```
# get data
import pandas as pd
url = "https://raw.githubusercontent.com/vectosaurus/bb_lite/master/3.0%20data/adult_comp_cont.csv"
df_pandas = pd.read_csv(url)
df_spark = sqlContext(df_pandas)
target_col = 'high_income'
numeric_cols = [i for i in df_pandas.columns if i !=target_col]
k_min = 2 # 2 in inclusive
k_max = 21 # 2i is exlusive. will fit till 20
max_iter = 1000
seed = 42
```

*This is the code I am using for getting the sklearn results*:

```
from sklearn.cluster import KMeans as KMeans_SKL
from sklearn.preprocessing import StandardScaler as StandardScaler_SKL
ss = StandardScaler_SKL(with_std=True, with_mean=True)
ss.fit(df_pandas.loc[:, numeric_cols])
df_pandas_scaled = pd.DataFrame(ss.transform(df_pandas.loc[:, numeric_cols]))
wsse_collect = []
for i in range(k_min, k_max):
km = KMeans_SKL(random_state=seed, max_iter=max_iter, n_clusters=i)
_ = km.fit(df_pandas_scaled)
wsse = km.inertia_
print('For k = {i:03d} WSSE is {wsse:10f}'.format(i=i, wsse=wsse))
wsse_collect.append(wsse)
```

*This is the code I am using for getting the spark results*

```
from pyspark.ml.feature import StandardScaler, VectorAssembler
from pyspark.ml.clustering import KMeans
standard_scaler_inpt_features = 'ss_features'
kmeans_input_features = 'features'
kmeans_prediction_features = 'prediction'
assembler = VectorAssembler(inputCols=numeric_cols, outputCol=standard_scaler_inpt_features)
assembled_df = assembler.transform(df_spark)
scaler = StandardScaler(inputCol=standard_scaler_inpt_features, outputCol=kmeans_input_features, withStd=True, withMean=True)
scaler_model = scaler.fit(assembled_df)
scaled_data = scaler_model.transform(assembled_df)
wsse_collect_spark = []
for i in range(k_min, k_max):
km = KMeans(featuresCol=kmeans_input_features, predictionCol=kmeans_prediction_col,
k=i, maxIter=max_iter, seed=seed)
km_fit = km.fit(scaled_data)
wsse_spark = km_fit.computeCost(scaled_data)
wsse_collect_spark .append(wsse_spark)
print('For k = {i:03d} WSSE is {wsse:10f}'.format(i=i, wsse=wsse_spark))
```

**UPDATE**

Following @Michail N's answer, I changed the `tol`

and `maxIter`

values for the Spark `KMeans`

model. I re-ran the code but I saw the same behavior repeating. But since Michail mentioned

Spark MLlib, in fact, implements K-means||

I increased the number of `initSteps`

by a factor of 50 and re-ran the process which gave the following results.

```
For k = 002 WSSE is 255318.718684
For k = 003 WSSE is 212364.906298
For k = 004 WSSE is 185999.709027
For k = 005 WSSE is 168616.028321
For k = 006 WSSE is 123879.449228
For k = 007 WSSE is 113646.930680
For k = 008 WSSE is 102803.889178
For k = 009 WSSE is 97819.497501
For k = 010 WSSE is 99973.198132
For k = 011 WSSE is 89103.510831
For k = 012 WSSE is 84462.110744
For k = 013 WSSE is 78803.619605
For k = 014 WSSE is 82174.640611
For k = 015 WSSE is 79157.287447
For k = 016 WSSE is 75007.269644
For k = 017 WSSE is 71610.292172
For k = 018 WSSE is 68706.739299
For k = 019 WSSE is 65440.906151
For k = 020 WSSE is 66396.106118
```

The increase of `wsse`

from `k=5`

and `k=6`

disappears. Although the behavior persists if you look at `k=13`

and `k=14`

and elsewhere, but atleast I got to know where this was coming from.