Title :
Competitive Decomposition of Input Space in a Competitive Modular Multinet System
Author_Institution :
Sepanta Robotics & AI Res. Found., Tehran
Abstract :
A competitive modular multinet structure is introduced as a local learning framework. Here, there is not a control switching mechanism between modules. Instead, the modules are encouraged to specialize in sub-regions of feature space competitively. In my decomposition scheme, the sub-regions are created, developed, shrunk or vanished during learning process, based on an interaction in a pool of networks. Just after specialization of networks in certain sub-regions, a selector is trained to learn the mapping between sub-regions and experts, which helps the multinet system to be used over test set. In my model, there is a balance between quantity as well as learning capacity of networks and complexity of feature space. Furthermore, task simplification and decision-making efficiency are both achieved. I also show that my model benefits from a smooth transition in the boundary of neighbor experts that improves the performance at boundary patterns. The proposed method is used for a regression toy problem as well as a Persian handwritten digit recognition task. The results of a comparative study reveal the superior performance-to-cost ratio of the proposed method.
Keywords :
decision making; learning (artificial intelligence); task analysis; Persian handwritten digit recognition; boundary patterns; competitive decomposition; competitive modular multinet system; control switching; decision making; feature space; learning framework; regression toy problem; task simplification; Costs; Decision making; Handwriting recognition; Interference; Neural networks; Problem-solving; Redundancy; Robustness; System testing; Voting;
Conference_Titel :
Neural Networks, 2007. IJCNN 2007. International Joint Conference on
Conference_Location :
Orlando, FL
Print_ISBN :
978-1-4244-1379-9
Electronic_ISBN :
1098-7576
DOI :
10.1109/IJCNN.2007.4371364