Grouping of Covid-19 Affected Areas in Bogor City Using The K-Means Algorithm

research
  • 10 Jul
  • 2021

Grouping of Covid-19 Affected Areas in Bogor City Using The K-Means Algorithm

Clustering plays an important role in processing big data, making predictions and
overcoming anomalies in data, identical characteristics in data sets are grouped
using iterative techniques. Because data is always evolving from day to day, very
large data sets with little can be identified into interesting patterns by grouping,
special methods are needed to handle it. In December 2019 there was an outbreak
of acute respiratory syndrome caused by coronavirus 2 infection that occurred in
Wuhan and on February 12, 2020, the World Health Organization officially
named the disease Corona Virus 2019 (Covid 19). This research will conduct
clustering of areas affected by Covid 19 in the City of Bogor. The clustering was
done using the K-Means method and dividing the data into 3 clusters, namely the
low-impact cluster, the medium-impact cluster and the high-impact cluster. The
results showed that from 68 urban villages in the city of Bogor, 45% of the area
was in the low-affected category, 35.29% of the area was in the medium-affected
category and 19.12% of the area was in the high-affected category.


Unduhan

 

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