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- 16 -<br />
- to narrow the target class and attributes using<br />
discretization which is more promising way<br />
on our opinion.<br />
References<br />
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19. http://gretl.sourceforge.net/<br />
20. www.cs.waikato.ac.nz/ml/weka/<br />
Institute of System Engineering and<br />
Robotics BAS<br />
139 Rousski blvd.<br />
4000 Plovdiv<br />
BULGARIA<br />
E-mail: markovavanya@yahoo.com<br />
Постъпила на 07.11.2012 г.<br />
Рецензент гл. ас. д-р Никола Шакев