| نویسندگان | مسلم محمدی جنقرا-حسین ابراهیم پور کومله |
| تاریخ انتشار | 2015-4-01 |
چکیده مقاله
Abstract— In value estimation, the inexperienced people's
estimation average is good approximation to true value,
provided that the answer of these individual are independent.
Classifier ensemble is the implementation of mentioned
principle in classification tasks that are investigated in two
aspects. In the first aspect, feature space is divided into several
local regions and each region is assigned with a highly
competent classifier and in the second, the base classifiers are
applied in parallel and equally experienced in some ways to
achieve a group consensus. In this paper combination of two
methods are used. An important consideration in classifier
combination is that much better results can be achieved if
diverse classifiers, rather than similar classifiers, are combined.
To achieve diversity in classifiers output, the symmetric
pairwise weighted feature space is used and the outputs of
trained classifiers over the weighted feature space are combined
to inference final result. In this paper MLP classifiers are used
as the base classifiers. The Experimental results show that the
applied method is promising