Boosting (Algorithms)
Subject
Subject Source: Library Of Congress Subject Headings
Found in 2 Collections and/or Records:
A backpropagation scheme with and without boosting, 1999
Item — Call number MU Thesis Pro
Identifier: b2088058
Abstract
Neural networks, simply stated, are machines that learn. A neural network consisting of several neurons, which are modeled after the human brain, uses synaptic weights, or interneuron connection strengths, to store acquired knowledge, which can be used in the future. One form of neural networks, feedforward networks, uses multilayer perceptrons, which are layered sets of neurons. This type of network contains an input layer, one or more hidden layers, and an output layer. Further, these...
Dates:
1999
Boosting algorithm techniques and analyses, 1996
Item — Call number MU Thesis Cat
Identifier: b2089046
Abstract
The enclosed project contains the results of the research, analysis and testing of a Modified Boosting Algorithm to be used by a configuration of learning machines in order to perform regression. The algorithm is used to construct a set of "weak learners", whose individual performance is only slightly better than 50%, but whose ensemble performance is better than any one regression machine. The intent is to develop the algorithm and to demonstrate that it performs as well, if...
Dates:
1996