Multi-output Gaussian process (MOGP) regression allows modelling dependencies among multiple correlated response variables. Similarly to standard Gaussian processes, MOGPs are sensitive to model misspecification and outliers, which can distort predictions within individual outputs. This situation can be further exacerbated by multiple anomalous response variables whose errors propagate due to correlations between outputs. To handle this situation, we extend and generalise the robust and conjugate Gaussian process (RCGP) framework introduced by Altamirano et al. (2024). This results in the multi-output RCGP (MO-RCGP): a provably robust MOGP that is conjugate, and jointly captures correlations across outputs. We thoroughly evaluate our approach through applications in finance and cancer research.
翻译:多输出高斯过程(MOGP)回归可用于建模多个相关响应变量间的依赖关系。与标准高斯过程类似,MOGP对模型误设和异常值敏感,可能导致单个输出的预测失真。当多个异常响应变量因输出间的相关性而传播误差时,该问题会进一步加剧。为应对此情况,我们扩展并推广了Altamirano等人(2024)提出的鲁棒共轭高斯过程(RCGP)框架,构建了多输出RCGP(MO-RCGP):一种具备可证明鲁棒性、保持共轭特性,并能联合捕获输出间相关性的MOGP模型。我们通过在金融和癌症研究领域的应用对该方法进行了全面评估。