With the rapid rise of neural architecture search, the ability to understand its complexity from the perspective of a search algorithm is desirable. Recently, Traor\'e et al. have proposed the framework of Fitness Landscape Footprint to help describe and compare neural architecture search problems. It attempts at describing why a search strategy might be successful, struggle or fail on a target task. Our study leverages this methodology in the context of searching across sensors, including sensor data fusion. In particular, we apply the Fitness Landscape Footprint to the real-world image classification problem of So2Sat LCZ42, in order to identify the most beneficial sensor to our neural network hyper-parameter optimization problem. From the perspective of distributions of fitness, our findings indicate a similar behaviour of the search space for all sensors: the longer the training time, the larger the overall fitness, and more flatness in the landscapes (less ruggedness and deviation). Regarding sensors, the better the fitness they enable (Sentinel-2), the better the search trajectories (smoother, higher persistence). Results also indicate very similar search behaviour for sensors that can be decently fitted by the search space (Sentinel-2 and fusion).
翻译:随着神经结构搜索的迅速兴起,从搜索算法的角度理解其复杂性的能力是可取的。 最近,Traor\'e et al. 提议了“ Fitness Landscape Footprint” 框架来帮助描述和比较神经结构搜索问题。 它试图描述为什么搜索战略在目标任务上可能成功、挣扎或失败。 我们的研究在跨传感器搜索的背景下利用这一方法,包括传感器数据聚合。 特别是,我们对So2Sat LCZ42 的真实世界图像分类问题应用了“ 适合地貌足印”, 以便确定我们神经网络超parometer优化问题最有益的传感器。 从健康分布的角度来看,我们的调查结果表明所有传感器搜索空间的类似行为:培训时间越长,总体的适应性越大,景观的平坦定(不那么模糊和偏差)。 关于传感器,它们能够越健康(Sentinel-2),搜索轨迹(mother)越好。 结果也表明传感器的搜索行为非常相似,而空间可体面地进行搜索。