IEEE Trans Cybern. 2016 May;46(5):1118-31. doi: 10.1109/TCYB.2015.2423657. Epub 2015 May 1.
There are numerous applications across all the spectrum of scientific areas that demand the mathematical study of signals/data. The two typical study areas of theoretical research on signal/data processing are of modeling (i.e., understanding of signal's behavior) and of analysis (i.e., evaluation of given signal for finding its association to existing signal models). The objective of this paper is to provide a stochastic framework to design both fuzzy filtering and analysis algorithms in a unified manner. The signals are modeled via linear-in-parameters models (e.g., a type of Takagi-Sugeno fuzzy model) based on variational Bayes (VB) methodology. This gives rise to the "negative free energy maximizing" filtering algorithm. The issue of intractability was handled first by carefully choosing the priors as conjugate to the likelihood and then by using Stirling approximation for the Gamma function. This paper highlighted that it was analytically possible to maximize the information theoretic quantity, "mutual information," exactly in the same manner as maximizing "negative free energy" in VB methodology. This gives rise to the "variational information maximizing" analysis algorithm. The robustness of the methodology against data outliers is achieved by modeling the noises with Student- t distributions. The framework takes into account the inputs noises as well apart from the usually considered output noise. The robustness of the adaptive filtering algorithm against noise is shown by a deterministic analysis where an upper bound on the magnitude of estimation errors is derived.
在各个科学领域都有许多应用需要对信号/数据进行数学研究。信号/数据处理理论研究的两个典型研究领域是建模(即理解信号的行为)和分析(即评估给定信号以发现其与现有信号模型的关联)。本文的目的是提供一个随机框架,以便以统一的方式设计模糊滤波和分析算法。信号通过基于变分贝叶斯 (VB) 方法的线性参数模型(例如,一种 Takagi-Sugeno 模糊模型)进行建模。这导致了“负自由能最大化”滤波算法。首先通过仔细选择与似然函数共轭的先验来处理不可行性问题,然后使用斯特林逼近来处理 Gamma 函数。本文强调,在 VB 方法中最大化信息量“互信息”与最大化“负自由能”在分析上是完全可行的。这导致了“变分信息最大化”分析算法。通过使用学生 t 分布对噪声进行建模,可以实现该方法对数据异常值的稳健性。该框架除了通常考虑的输出噪声外,还考虑了输入噪声。通过确定性分析证明了自适应滤波算法对噪声的稳健性,得出了估计误差幅度的上界。