The focus of the paper is functional output regression (FOR) with convoluted losses. While most existing work consider the square loss setting, we leverage extensions of the Huber and the $\epsilon$-insensitive loss (induced by infimal convolution) and propose a flexible framework capable of handling various forms of outliers and sparsity in the FOR family. We derive computationally tractable algorithms relying on duality to tackle the resulting tasks in the context of vector-valued reproducing kernel Hilbert spaces. The efficiency of the approach is demonstrated and contrasted with the classical squared loss setting on both synthetic and real-world benchmarks.
翻译:本文的焦点是功能性产出回归(FOR)和复杂的损失。虽然大多数现有工作考虑平方损失设置,但我们利用Huber和美元不敏感损失(由不成熟的卷变引起的)的延伸,并提出一个灵活框架,能够处理家庭内各种形式的外部和宽度。我们从矢量估值的再生产内核Hilbert空间的角度,得出可计算可移动的算法,以解决由此产生的任务。这种方法的效率与合成和实际世界基准的典型的平方损失相比较,并得到了证明。