Section 3.4 described that we chose the ML (or, equivalently,
minimum entropy) value of the Gaussian-kernel standard-deviation
. We have found that for
sufficiently large sample size
, the choice of
is not sensitive to the
value of
, thereby enabling us to automatically set
to an
appropriate value before the processing begins. Figure 3.2(b) depicts this
behavior. Thus, given the Markov neighborhood and the local-sampling Gaussian variance, the method
chooses the critical Parzen-window kernel parameters
and
automatically in
a data-driven fashion using information-theoretic metrics.
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