Understanding Neural Networks as Statistical Tools 论文

1996The American Statistician引用 276
Neural Networks and ApplicationsFace and Expression RecognitionTime Series Analysis and Forecasting

详细信息

发表期刊/会议
The American Statistician
发表日期
1996-11-01
发表年份
1996

关键词

Neural Networks and ApplicationsFace and Expression RecognitionTime Series Analysis and Forecasting

摘要

Abstract Neural networks have received a great deal of attention over the last few years. They are being used in the areas of prediction and classification, areas where regression models and other related statistical techniques have traditionally been used. In this paper we discuss neural networks and compare them to regression models. We start by exploring the history of neural networks. This includes a review of relevant literature on the topic of neural networks. Neural network nomenclature is then introduced, and the backpropagation algorithm, the most widely used learning algorithm, is derived and explained in detail. A comparison between regression analysis and neural networks in terms of notation and implementation is conducted to aid the reader in understanding neural networks. We compare the performance of regression analysis with that of neural networks on two simulated examples and one example on a large dataset. We show that neural networks act as a type of nonparametric regression model, enabling us to model complex functional forms. We discuss when it is advantageous to use this type of model in place of a parametric regression model, as well as some of the difficulties in implementation.