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ADL-code
- 通过对集成误差公式的理论分析,提出了一种能主动引导个体网络进行差异性学习的集成网络学习算法。该方法通过对集成误差的分解,使个体网络的训练准则函数中包含个体网络误差相关度的因素,并通过协同训练,引导个体网络进行差异性学习。该方法在基于油气分析的变压器故障诊断的实验结果表明,该方法的故障诊断准确率优于传统的三比值法与BP神经网络,其性能也比经典的集成方法Bagging和Boosting方法更稳定可靠。-A learning algorithm is proposed in this paper by
[emuch.net][676077]gcmc
- 分子模拟学习的好材料,巨正则系综montecarlo-Molecular modeling good learning materials, the grand canonical ensemble montecarlo
AOSOLogitBoost_
- ensemble machine learning technique that uses logiboot. ensemble was proved to be of better accuracy than other methods
miltool
- 多示例学习的算法集合,集成了各种主流设计算法-An ensemble of the typical multiple-instance learning algorithms
Maximum-Entropy
- In the distributed processing, where common labeled data may be not available for designing classifier ensemble, however, an ensemble solution is necessary, traditional fixed decision aggregation could not account for class prior mismatch or cl
demo3
- 在demo中,用EKF和有噪声的EKF训练非线性、非平稳数据。-In this demo, I use the EKF and EKF with noise adaptation to train a neural network with data generated a nonlinear, non-stationary state space model. Adaptation is done by matching the innovations ensemble covariance
arimanet
- ARIMA模型全称为自回归积分滑动平均模型(Autoregressive Integrated Moving Average Model,简记ARIMA),是由博克思(Box)和詹金斯(Jenkins)于70年代初提出一著名时间序列预测方法[1] ,所以又称为box-jenkins模型、博克思-詹金斯法。其中ARIMA(p,d,q)称为差分自回归移动平均模型,AR是自回归, p为自回归项; MA为移动平均,q为移动平均项数,d为时间序列成为平稳时所做的差分次数。所谓ARIMA模型,是指将非平稳