Thayer J F, von Eye A, Rovine M J
Department of Psychology, University of Missouri, Columbia 65211, USA.
Biomed Sci Instrum. 1995;31:25-8.
Examination of classification or confusion matrices in neural network models is often advocated as a way to investigate the effects of network architecture on classification rules and to understand the topography of the classification space. In addition, for model comparison purposes it is useful to be able to make statements concerning the statistical reliability of these patterns of hit and error cells. Prediction analysis provides a number of descriptive and inferential measures for the evaluation of hypotheses about patterns of hit and error cells. The present paper applied recent advances in prediction analysis to the examination of neural network classification matrices. Results of the application of prediction analysis to the generalized XOR problem and to data from classification of cardiovascular responses of human subjects were used to illustrate the determination of absolute and relative fit of omnibus models as well as the evaluation of specific hypotheses within these models.
神经网络模型中的分类或混淆矩阵检查常常被提倡作为一种研究网络架构对分类规则的影响以及理解分类空间拓扑结构的方法。此外,出于模型比较的目的,能够对这些命中和错误单元格模式的统计可靠性做出陈述是很有用的。预测分析提供了许多描述性和推断性度量,用于评估关于命中和错误单元格模式的假设。本文将预测分析的最新进展应用于神经网络分类矩阵的检查。将预测分析应用于广义异或问题和人类受试者心血管反应分类数据的结果,用于说明综合模型的绝对和相对拟合度的确定以及这些模型中特定假设的评估。