Experimenting with artificial neural networks-artificial intelligence mini-tutorial. 3

Erach A. Irani, J. M. Long, J. Slagle
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Abstract

For pt.1 see ibid., p.33-42; for pt.2 see ibid., p.43-4. To show how neural nets work, experiences in an experiment using them are described. The experiment involves using AI techniques to assist in the discovery of causal relationships between the variables existing in a large clinical trial database. A peripheral vascular disease database was used to acquire a feeling for the complexities involved in developing a distributed encoding scheme and to determine the computational resources required to train a neural net for the type of data used. By testing several models the effects of changes in the encoding scheme and the number of training iterations the system needed to predict the appropriate change needed could be determined. These results were compared to the information available from other analyses of the same data. The generative capabilities of the system were then tested by training it over one sample of cases and applying it to cases it had not encountered before. Some idea of the computational resources needed in terms of time and memory capacity was developed.<>
人工神经网络实验-人工智能迷你教程。3.
第1页见同上,第33-42页;第2页见同上,第43-4页。为了说明神经网络是如何工作的,本文描述了使用神经网络的实验经验。该实验涉及使用人工智能技术协助发现大型临床试验数据库中存在的变量之间的因果关系。外周血管疾病数据库用于了解开发分布式编码方案所涉及的复杂性,并确定为使用的数据类型训练神经网络所需的计算资源。通过测试几个模型,可以确定编码方案变化的影响和系统预测所需的适当变化所需的训练迭代次数。这些结果与对相同数据的其他分析所得的信息进行了比较。然后,通过对一个案例样本进行训练,并将其应用于以前没有遇到过的案例,来测试系统的生成能力。从时间和内存容量的角度对所需的计算资源有了一些概念
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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