动态系统的预测——分而治之方法

Goutam Chakraborty, H. Watanabe, B. Chakraborty
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引用次数: 2

摘要

这项工作的目的是找到一个从大型和复杂的动态数据中做出决策的一般框架,其中所有的影响属性都是未知的,并且一些可用的,表面上相关的属性可能实际上是不相关的。例如:来自病人监护系统的各种诊断数据,来自金融市场的数据,或大型连锁店的销售数据,用于分析顾客的购买模式。在这些系统中,许多因素以复杂的方式相互作用,因此通常不可能进行完整的分析,而传统的预测统计方法也失败了。在这项工作中,我们提出了一个使用软计算工具预测此类问题的框架。我们在多变量空间中找到分区,以便尽可能地将相同目标预测或决策的数据分组在那里。这种搜索在不同的子空间级别执行,即特征子集选择。该部分是在对原始数据进行离散化处理后,利用粗糙集理论完成的。我们推测,如果有足够数量的具有相同决策的数据落在其中一个子空间分区中,则该分区中的任何数据都是可预测的。一个数据可以是多个这样的子空间分区的成员。在下一步,我们为每个这样的子空间分区训练单个神经网络,使用属于该子空间分区的原始连续值数据来学习输入-决策映射。对于一个新的数据,由训练好的神经网络专家系统进行决策。将该模型应用于股票价值预测时,结果优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction in dynamic system - a divide and conquer approach
The aim of this work is to find a general framework for making decision from large and complex dynamic data, where all the influencing attributes are not known, and some of the available, apparently relevant, attributes could really be irrelevant. Some examples are: various diagnostic data from patient monitoring system, data from financial market, or the sales data of a big chain store for analyzing the buying pattern of customers. In these systems, many factors interact in a complex manner so that a complete analysis is often impossible, and conventional statistical methods for prediction also fail. In this work, we propose a framework for prediction in such problems using soft computing tools. We find partitions in the multivariate space so that data of same targeted forecast or decision are grouped there to the extent possible. This search is performed at different subspace level, i.e., a feature-subset selection. This part is accomplished by using rough set theory, after discretizing the original data. We conjecture that, if sufficient number of data with same decision falls in one of those subspace partition, any data in that partition would be predictable. A data can be member of more than one such subspace partition. In the next step, we train individual neural networks for each such subspace partition to learn the input-decision mapping using the original continuous valued data belonging to that subspace partition. For a new data, the ensemble of the trained neural network expert systems takes the decision. When applied to the prediction of stock-value, our model gave better results compared to other methods.
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