一种新的信息预测方法

Ting Zhang, Yi Du
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引用次数: 0

摘要

为了预测或重构未知信息,提出了多种插值方法。然而,当条件数据很少甚至没有条件数据时,预测结果往往很差。最初,一种称为多点地质统计(MPS)的方法起源于地质统计学领域,它允许从训练图像中提取多点结构,然后MPS可以将这些结构复制到要模拟的区域。然而,原始MPS只能预测离散变量。为了克服这一缺点,提出了一种基于滤波器的连续MPS预测方法来预测由连续变量组成的未知信息。使用过滤器实现降维,并使用过滤器创建过滤器分数空间。所有相似的训练模式落在过滤器得分空间中的一个单元格中,以创建原型。在预测过程中,随机绘制来自单元格的训练模式,然后将其粘贴回模拟网格。实验结果表明,该方法可以有效地预测区域的未知信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Method for Information Prediction
Many interpolation methods were proposed to predict or reconstruct unknown information. However, when the conditional data are quite few or even there are no conditional data, predicted results are often poor. Originally, a method called multiple-point geostatistics (MPS) originated from geostatistical fields and it allows extracting multiple-point structures from training images, after that MPS can copy these structures to the regions to be simulated. However, original MPS can only predict discretized variables. To overcome the disadvantage, a method using continuous MPS based on filters is proposed to predict the unknown information composed of continuous variables. Filters are used to realize dimension reduction, and a filter score space can be created using filters. All similar training patterns fall into a cell in the filter score space to create a prototype. During prediction, a training pattern from a cell is randomly drawn, and then is pasted back onto the simulation grid. Experimental results show that our method can effectively predict the unknown information of a region.
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