从训练好的网络中进行财务预测和规则提取

R. Kane, N. Milgram
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引用次数: 13

摘要

本文描述了一种使用约束网络的预测方法。提出了两种互补的方法。第一种方法的主要特点是基于反向传播的有效预测算法。一些单元被约束保存网络的逻辑信息,而不受约束的单元保留数字信息。因此,在训练过程中,每个单元的任务都是明确的。第二种方法侧重于规则提取。使用约束网络,我们能够从训练过的网络中提取信息。这个属性是必不可少的,因为它可以分析、解释、提取并因此控制在训练过的网络中发生的事情。本文报道了这些方法的仿真结果。
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Financial forecasting and rules extraction from trained networks
This paper describes a forecasting approach using constrained networks. Two complementary approaches are proposed. The main property of the first approach is to lead to an efficient predictive algorithm based on backpropagation. Some units are constrained to hold the logical information of the network whereas the unconstrained unit keep the numerical information. Therefore the task of each unit is defined during the training. The second approach is focused on rules extraction. Using constrained networks, we are able to extract information from trained networks. This property is essential as it is possible to analysis, explain, extract and therefore control what happens inside trained networks. Simulation results for these approaches are reported.<>
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