In this work, we propose a robust Bayesian sparse learning algorithm based on Bayesian group Lasso with spike and slab priors for the discovery of partial differential equations with variable coefficients. Using the samples draw from the posterior distribution with a Gibbs sampler, we are able to estimate the values of coefficients, together with their standard errors and confidence intervals. Apart from constructing the error bars, uncertainty quantification can also be employed for designing new criteria of model selection and threshold setting. This enables our method more adjustable and robust in learning equations with time-dependent coefficients. Three criteria are introduced for model selection and threshold setting to identify the correct terms: the root mean square, total error bar, and group error bar. Moreover, three noise filters are integrated with the robust Bayesian sparse learning algorithm for better results with larger noise. Numerical results demonstrate that our method is more robust than sequential grouped threshold ridge regression and group Lasso in noisy situations through three examples.
翻译:在这项工作中,我们提出了一个基于Bayesian Group Lasso 的强大的Bayesian稀疏学习算法,该算法基于Bayesian Group Lasso 组,配有钉子和平板前缀,用于发现带有可变系数的局部差分方程。我们利用样品与Gibbs取样员一起从后方分布中抽取的样本,能够估计系数值以及标准错误和信任间隔。除了构建错误栏外,还可以使用不确定性量化法来设计模型选择和阈值设定的新标准。这使我们的方法在学习公式中能够更加适应和稳健健。在模型选择和阈值设置中引入了三个标准来识别正确的术语:根正方形、总误差栏和群错栏。此外,三个噪声过滤器与强大的Bayesian 分散学习算法相结合,以产生更大的噪音。数字结果表明,我们的方法比按顺序组合的临界阈值坡坡回归和通过三个例子在噪音情况下的Lasso组更为稳健。