Department of Electrical and Computer Engineering, University of Missouri, Columbia, MO 65201.
IEEE Trans Pattern Anal Mach Intell. 1985 Jun;7(6):693-9. doi: 10.1109/tpami.1985.4767725.
The perceptron algorithm, one of the class of gradient descent techniques, has been widely used in pattern recognition to determine linear decision boundaries. While this algorithm is guaranteed to converge to a separating hyperplane if the data are linearly separable, it exhibits erratic behavior if the data are not linearly separable. Fuzzy set theory is introduced into the perceptron algorithm to produce a ``fuzzy algorithm'' which ameliorates the convergence problem in the nonseparable case. It is shown that the fuzzy perceptron, like its crisp counterpart, converges in the separable case. A method of generating membership functions is developed, and experimental results comparing the crisp to the fuzzy perceptron are presented.
感知器算法是梯度下降技术的一类,已广泛应用于模式识别领域以确定线性决策边界。虽然如果数据是线性可分的,该算法保证可以收敛到一个分离超平面,但如果数据不是线性可分的,它的行为就会不稳定。将模糊集理论引入感知器算法中,产生一种“模糊算法”,以改善不可分离情况下的收敛问题。结果表明,模糊感知器与清晰感知器一样,在可分离情况下收敛。开发了一种生成隶属函数的方法,并给出了将清晰感知器与模糊感知器进行比较的实验结果。