Supervised learning algorithms, often used to find the I/O relationship in data, have the tendency to be trapped in local optima as opposed to the desirable global optima. In this paper, we discuss the RPHP learning algorithm. The algorithm uses Real Coded Genetic Algorithm based global and local searches to find a set of pseudo global optimal solutions. Each pseudo global optimum is a local optimal solution from the point of view of all the patterns but globally optimal from the point of view of a subset of patterns. Together with RPHP, a Kth nearest neighbor algorithm is used as a second level pattern distributor to solve a test pattern. We also show theoretically the condition under which finding several pseudo global optimal solutions r...
Particle swarm optimization (PSO) is a type of swarm intelligence algorithm that is frequently used ...
One important challenge of a hybrid genetic algorithm (HGA) (also called memetic algorithm) is the t...
Local learning employs locality adjusting mechanisms to give local function estimation for each quer...
Abstract—This paper proposes a hybrid optimization algorithm which combines the efforts of local sea...
A robust locally adaptive learning algorithm is developed via two enhancements of the Resilient Prop...
In this paper, we propose the Multi-Learner Based Recursive Supervised Training (MLRT) algorithm whi...
This paper introduces three hybrid algorithms that help in solving global optimization problems usin...
In this paper, we investigate the application of lateral symmetry to supervised learning using genet...
This paper presents an evolutionary approach and an incremental approach to find learning rules of s...
Centre for Intelligent Systems and their Applicationsstudentship 9314680This thesis is an investigat...
This report presents P scg , a new global optimization method for training multilayered perceptr...
The paper presents a two-level learning method for radial basis function (RBF) networks. A regulariz...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
Abstract Recurrent neural networks (RNNs), with the capability of dealing with spatio-temporal relat...
Supervised learning is the process of data mining for deducing rules from training datasets. A broad...
Particle swarm optimization (PSO) is a type of swarm intelligence algorithm that is frequently used ...
One important challenge of a hybrid genetic algorithm (HGA) (also called memetic algorithm) is the t...
Local learning employs locality adjusting mechanisms to give local function estimation for each quer...
Abstract—This paper proposes a hybrid optimization algorithm which combines the efforts of local sea...
A robust locally adaptive learning algorithm is developed via two enhancements of the Resilient Prop...
In this paper, we propose the Multi-Learner Based Recursive Supervised Training (MLRT) algorithm whi...
This paper introduces three hybrid algorithms that help in solving global optimization problems usin...
In this paper, we investigate the application of lateral symmetry to supervised learning using genet...
This paper presents an evolutionary approach and an incremental approach to find learning rules of s...
Centre for Intelligent Systems and their Applicationsstudentship 9314680This thesis is an investigat...
This report presents P scg , a new global optimization method for training multilayered perceptr...
The paper presents a two-level learning method for radial basis function (RBF) networks. A regulariz...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
Abstract Recurrent neural networks (RNNs), with the capability of dealing with spatio-temporal relat...
Supervised learning is the process of data mining for deducing rules from training datasets. A broad...
Particle swarm optimization (PSO) is a type of swarm intelligence algorithm that is frequently used ...
One important challenge of a hybrid genetic algorithm (HGA) (also called memetic algorithm) is the t...
Local learning employs locality adjusting mechanisms to give local function estimation for each quer...