Previous works on classification committees have shown that an efficient committee should consist of networks that are not only very accurate, but also diverse. In this work, aiming to explore trade-off between the diversity and accuracy of committee networks, the steps of neural network training, aggregation of the networks into a committee, and elimination of irrelevant input variables are integrated. To accomplish the elimination, an additional term to the Negative correlation learning error function, which forces input weights connected to the irrelevant input variables to decay, is added.
Identifer | oai:union.ndltd.org:LABT_ETD/oai:elaba.lt:LT-eLABa-0001:E.02~2005~D_20050526_062729-44266 |
Date | 26 May 2005 |
Creators | Cibulskis, Vladas |
Contributors | Maciulevičius, Stasys, Barauskas, Rimantas, Lipnickas, Arūnas, Telksnys, Laimutis, Plėštys, Rimantas, Gelžinis, Adas, Pranevičius, Henrikas, Mockus, Jonas, Verikas, Antanas, Jasinevičius, Raimundas, Kaunas University of Technology |
Publisher | Lithuanian Academic Libraries Network (LABT), Kaunas University of Technology |
Source Sets | Lithuanian ETD submission system |
Language | Lithuanian |
Detected Language | English |
Type | Master thesis |
Format | application/pdf |
Source | http://vddb.library.lt/obj/LT-eLABa-0001:E.02~2005~D_20050526_062729-44266 |
Rights | Unrestricted |
Page generated in 0.0019 seconds