1-NN Rule: Given an unknown sample X decide if for That is, assign X to category if the closest...

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Transcript of 1-NN Rule: Given an unknown sample X decide if for That is, assign X to category if the closest...

Page 1: 1-NN Rule: Given an unknown sample X decide if for That is, assign X to category if the closest neighbor of X is from category i.
Page 2: 1-NN Rule: Given an unknown sample X decide if for That is, assign X to category if the closest neighbor of X is from category i.

1-NN Rule: Given an unknown sample X decide if

for

That is, assign X to category if the closest neighbor of X is from category i.

i

),(),( jlik XXdXXd ikjl

i

X

Page 3: 1-NN Rule: Given an unknown sample X decide if for That is, assign X to category if the closest neighbor of X is from category i.

k-NN rule: instead of looking at the closest sample, we look at k nearest neighbors to X and we take a vote. The largest vote wins. k is usually taken as an odd number so that no ties occur.

Page 4: 1-NN Rule: Given an unknown sample X decide if for That is, assign X to category if the closest neighbor of X is from category i.
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Distance Measures(Metrices)Non-negativity

Reflexivity when only x = y

Symmetry

Triangle inequality

Euclidian distance satisfies.Not always a meaningful measure.Consider 2 features with different units scaling

problem.

0),( yxD

0),( yxD

),(),( xyDyxD

),(),(),( yxDyzDzxD

)(2

hight

X

)(1

weight

X

Scale of changed to half.1X

Page 6: 1-NN Rule: Given an unknown sample X decide if for That is, assign X to category if the closest neighbor of X is from category i.

Minkowski MetricA general definition

norm – City block (Manhattan) distance norm – Euclidian

Scaling: Normalize the data by re-scaling (Reduce the range to 0-1) (equivalent to changing the metric)

kd

i

k

iik yxyxL/1

1

),(

1L2L

Y

b

a

X

baL 1

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References

R.O. Duda, P.E. Hart, and D.G. Stork, Pattern Classification, New York: John Wiley, 2001. N. Yalabık, “Pattern Classification with Biomedical Applications Course Material”, 2010.