Question: Inability to handle categorical data. Difficulty in detemining the number of clusters. Efficiency on large datasets and high - dimensional data. Sensitivity to initial conditions.
Inability to handle categorical data.
Difficulty in detemining the number of clusters.
Efficiency on large datasets and highdimensional data.
Sensitivity to initial conditions.
Unsuitable for clusters of arbitrary shapes.
Options:
A and
B and
C and
D All the above
Q Which of the following clustering algorithms suffers from
the problem of convergence at local optima?
KMeans clustering algorithm.
Hierarchy clustering algorithm.
ExpectationMaximization clustering algorithm.
Gaussian Mixture Model clustering algorithm.
Options:
A only
B and
C and
D and
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