Evaluating difficulty and biases in machine learning models has become of extreme importance as current models are now being applied in real-world situations. In this paper we present a simple method for calculating a difficulty score based on the accumulation of losses for each sample during training. We call this the action score. Our proposed method does not require any modification of the model neither any external supervision, as it can be implemented as callback that gathers information from the training process. We test and analyze our approach in two different settings: image classification, and object detection, and we show that in both settings the action score can provide insights about model and dataset biases.
翻译:评估机器学习模式的难度和偏差已变得极为重要,因为当前模式正在现实世界中应用。在本文中,我们提出一个简单的方法,根据每个样本在培训过程中的损失累积情况计算困难分数。我们称之为行动分数。我们提议的方法不需要对模型作任何修改,也不需要外部监督,因为它可以作为从培训过程中收集信息的回调来加以实施。我们测试和分析我们在两种不同环境中的方法:图像分类和物体探测,我们显示在两种环境下,行动分数可以提供模型和数据集偏差的洞察力。