Statistics – Machine Learning
Scientific paper
2007-09-18
Statistics
Machine Learning
The new version includes an additional theorem, Theorem 3
Scientific paper
In recent years, kernel density estimation has been exploited by computer scientists to model machine learning problems. The kernel density estimation based approaches are of interest due to the low time complexity of either O(n) or O(n*log(n)) for constructing a classifier, where n is the number of sampling instances. Concerning design of kernel density estimators, one essential issue is how fast the pointwise mean square error (MSE) and/or the integrated mean square error (IMSE) diminish as the number of sampling instances increases. In this article, it is shown that with the proposed kernel function it is feasible to make the pointwise MSE of the density estimator converge at O(n^-2/3) regardless of the dimension of the vector space, provided that the probability density function at the point of interest meets certain conditions.
Chang Darby Tien-Hao
Chen Chien-Yu
Hung Hao-Geng
Ou Yu-Yen
Oyang Yen-Jen
No associations
LandOfFree
Supervised Machine Learning with a Novel Kernel Density Estimator does not yet have a rating. At this time, there are no reviews or comments for this scientific paper.
If you have personal experience with Supervised Machine Learning with a Novel Kernel Density Estimator, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Supervised Machine Learning with a Novel Kernel Density Estimator will most certainly appreciate the feedback.
Profile ID: LFWR-SCP-O-456378