Problem statement: The aim of data classification is to establish rules for the classification of some observations assuming that we have a database, which includes of at least two classes. There is a training set for each class. Those problems occur in a wide range of human activity. One of the most promising ways to data classification is based on methods of mathematical optimization. Approach: The problem of data classification was studied as a problem of global, nonsmooth and nonconvex optimization; this approach consists of describing clusters for the given training sets. The data vectors are assigned to the closest cluster and correspondingly to the set, which contains this cluster and an algorithm based on a derivative-free method ...
Many randomized heuristic derivative-free optimization methods share a framework that iteratively le...
In data mining we come across many problems such as function optimization problem or parameter estim...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...
We reduce the supervised classification to solving a nonsmooth optimization problem. The proposed me...
This thesis is devoted to the development of algorithms for solving nonsmooth nonconvex problems. So...
Clustering is one of an interesting data mining topics that can be applied in many fields. Recently...
We reduce the supervised classification to solving a nonsmooth optimization problem. The proposed me...
"The purpose of this thesis is to develop and test new methods for data classification based on math...
We examine various methods for data clustering and data classification that are based on the minimiz...
none2siA structured version of derivative-free random pattern search optimization algorithms is intr...
We examine various methods for data clustering and data classification that are based on the minimiz...
A new derivative-free optimization method for unconstrained optimization of partially separable func...
The field of n-dimensional sphere packings is elegant and mature in its mathematic development and c...
This thesis addresses the topic of unconstrained optimization. It describes seven derivative-free op...
The problem of cluster analysis is formulated as a problem of non-smooth, non-convex optimization, a...
Many randomized heuristic derivative-free optimization methods share a framework that iteratively le...
In data mining we come across many problems such as function optimization problem or parameter estim...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...
We reduce the supervised classification to solving a nonsmooth optimization problem. The proposed me...
This thesis is devoted to the development of algorithms for solving nonsmooth nonconvex problems. So...
Clustering is one of an interesting data mining topics that can be applied in many fields. Recently...
We reduce the supervised classification to solving a nonsmooth optimization problem. The proposed me...
"The purpose of this thesis is to develop and test new methods for data classification based on math...
We examine various methods for data clustering and data classification that are based on the minimiz...
none2siA structured version of derivative-free random pattern search optimization algorithms is intr...
We examine various methods for data clustering and data classification that are based on the minimiz...
A new derivative-free optimization method for unconstrained optimization of partially separable func...
The field of n-dimensional sphere packings is elegant and mature in its mathematic development and c...
This thesis addresses the topic of unconstrained optimization. It describes seven derivative-free op...
The problem of cluster analysis is formulated as a problem of non-smooth, non-convex optimization, a...
Many randomized heuristic derivative-free optimization methods share a framework that iteratively le...
In data mining we come across many problems such as function optimization problem or parameter estim...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...