This paper presents the first evaluation of k-nearest neighbours-Averaging (kNN-Avg) on a real-world case study. kNN-Avg is a novel technique that tackles the challenges of noisy multi-objective optimisation (MOO). Existing studies suggest the use of repetition to overcome noise. In contrast, kNN-Avg approximates these repetitions and exploits previous executions, thereby avoiding the cost of re-running. We use kNN-Avg for the scenario generation of a real-world autonomous driving system (ADS) and show that it is better than the noisy baseline. Furthermore, we compare it to the repetition-method and outline indicators as to which approach to choose in which situations.
翻译:本文介绍了对实实在在的案例研究的K-近邻优化(kNN-Avg)的第一次评估。 kNN-Avg是应对噪音多目标优化(MOO)挑战的一种新颖技术。现有的研究表明,可以使用重复来克服噪音。相比之下, kNN-Avg 接近了这些重复,利用了以往的处决,从而避免了重新运行的成本。我们用 kNN-Avg 来设想一个真实世界的自主驾驶系统(ADS)的生成,并表明它比噪声基线更好。此外,我们将它与重复方法进行比较,并概述了在何种情况下选择哪种情况的指标。