Line 3: | Line 3: | ||
P(x) = k/(NV) | P(x) = k/(NV) | ||
− | where, k is the number of samples in V | + | where, k is the number of samples in V. |
− | N is the total number of samples | + | |
− | V is the volume surrounding x | + | N is the total number of samples. |
+ | |||
+ | V is the volume surrounding x. | ||
This estimate is computed by two approaches | This estimate is computed by two approaches |
Revision as of 21:19, 7 April 2008
The non-parametric density estimation is
P(x) = k/(NV)
where, k is the number of samples in V.
N is the total number of samples.
V is the volume surrounding x.
This estimate is computed by two approaches
1) Parzen window approach
; Fixing the volume V and determining the number k of data points inside V
2) KNN(K-Nearest Neighbor)
;Fixing the value of k and determining the minimum volume V that encompasses k points in the dataset
- The advantages of non-parametric techniques
- No assumption about the distribution required ahead of time - With enough samples we can converge to an target density
- The disadvantages of non-parametric techniques
- If we have a good classification, the number of required samples may be very large - Computationally expensive