제어로봇시스템학회:학술대회논문집
- 2000.10a
- /
- Pages.16-16
- /
- 2000
The Design of a Pseudo Gaussian Function Network
의사 가우시안 함수 신경망의 설계
Abstract
This paper describes a new structure re create a pseudo Gaussian function network (PGFN). The activation function of hidden layer does not necessarily have to be symmetric with respect to center. To give the flexibility of the network, the deviation of pseudo Gaussian function is changed according to a direction of given input. This property helps that given function can be described effectively with a minimum number of center by PGFN, The distribution of deviation is represented by level set method and also the loaming of deviation is adjusted based on it. To demonstrate the performance of the proposed network, general problem of function estimation is treated here. The representation problem of continuous functions defined over two-dimensional input space is solved.
Keywords
- pseudo gaussian function;
- pseudo gaussian function network (PGFN);
- radial basis function;
- supervised learning;
- level set method