基于改进流形学习和深度学习相结合的大数据挖掘预测模型

Xiurong Chen, Yixiang Tian
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引用次数: 0

摘要

本文将局部线性嵌入(LLE)与连续深度信念网络(CDBN)相结合作为RBF的输入,构造了一个混合特征的RBF模型。然而,LLE过于依赖于局部域,不容易确定,因此我们提出了一种新的方法——核熵线性嵌入(KELE),该方法利用核熵分量分析(kea)将非线性问题转化为线性问题。由于CDBN难以确定网络结构且缺乏监督,因此我们利用从kea中获得的核熵信息来改善这种情况,称为KECDBN。在实证部分,我们使用外汇汇率时间序列来检验改进方法的效果,结果表明,KELE和KECDBN分别在降维和提取特征方面表现出更好的效果,也提高了混合特征RBF的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The big data mining forecasting model based on combination of improved manifold learning and deep learning
In this paper, we use the combination of Local Linear Embedding (LLE) with Continuous Deep Belief Networks (CDBN) as the input of RBF, and construct a mixed-feature RBF model. However, LLE depends too much on the local domain which is not easy to be determined, so we propose a new method, Kernel Entropy Linear Embedding (KELE) which uses Kernel Entropy Component Analysis (KECA) to transfer the non-linear problem into linear problem. CDBN has the difficulty in confirming network structure and lacks supervision, so we improve the situations by using the kernel entropy information obtained from KECA, which is called KECDBN. In the empirical part, we use the foreign exchange rate time series to examine the effects of the improved methods, and results show that both the KELE and the KECDBN show better effects in reducing dimensionality and extracting features, respectively, an also improve the prediction accuracy of the mixed-feature RBF.
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