Villarroya A, Ríos M, Oller J M
Departament d'Estadística, Universitat de Barcelona, Spain.
Biometrics. 1995 Sep;51(3):908-19.
We propose a new algorithm for the allocation of an individual to one of several possible groups or populations. The algorithm enables us to define a finite partition over the sample space, based on distance function. This partition is used, jointly with the application of a standard Bayesian decision rule, to allocate individuals to the populations. The algorithm also provides a measure of the allocation confidence for each individual, in a similar manner to that of logistic regression. The error rates for classification are also computed using the leave-one-out method. Results are compared with those obtained with other discriminant analysis techniques previously reported: Fisher's linear discriminant function, the quadratic discriminant function, logistic discrimination, and others.
我们提出了一种新算法,用于将个体分配到几个可能的组或总体之一。该算法使我们能够基于距离函数在样本空间上定义一个有限划分。这个划分与标准贝叶斯决策规则的应用一起,用于将个体分配到各个总体中。该算法还以类似于逻辑回归的方式,为每个个体提供了一种分配置信度的度量。分类错误率也使用留一法进行计算。将结果与先前报道的其他判别分析技术所获得的结果进行比较:费舍尔线性判别函数、二次判别函数、逻辑判别等。