عنوان البحث(Papers / Research Title)
Data Construction using Genetic Programming Method to Handle Data Scarcity Problem
الناشر \ المحرر \ الكاتب (Author / Editor / Publisher)
سماهر حسين علي الجنابي
Citation Information
سماهر,حسين,علي,الجنابي ,Data Construction using Genetic Programming Method to Handle Data Scarcity Problem , Time 16/11/2016 10:36:47 : كلية العلوم للبنات
وصف الابستركت (Abstract)
International Journal of Advancements in Computing Technology_2010
الوصف الكامل (Full Abstract)
Genetic Programming Data Construction Method (GPDCM) uses in this work to handle one of the key problems in the supervised learning which is due to the insufficient size of training dataset. The methodology consists of four stages: first, represent each record in small dataset as decision tree(DT) where the collection of these trees represent the population of Genetic Programming algorithm(GPA). Second, attaching the numerical value to each node of those trees (Gain information Ratio). These values represent the fitness of the nodes. Third, expanding the small population by apply parallel method in three different types of crossover which is related to the GPA for each pair of the parents. Fourth, forecasting the classes to new samples generated by GPDCM using back propagation neural network (BPNN) ,then apply ROC graphs as a measures of Robustness Evaluation. The work takes all the important variables in to account, because it is started by collect DTs and it applies on five different datasets (iris dataset, weather dataset, heart dataset, soybean dataset and lamphgraphy dataset). For the theoretical and practical validity, we compare between the proposed method and the other applied methods. As the result, we fined that GPDCM is promising techniques for expanding the extremely small dataset and extracted a useful knowledge .
تحميل الملف المرفق Download Attached File
|
|