Annotating data for supervised learning can be costly. When the annotation budget is limited, active learning can be used to select and annotate those observations that are likely to give the most gain in model performance. We propose an active learning algorithm that, in addition to selecting which observation to annotate, selects the precision of the annotation that is acquired. Assuming that annotations with low precision are cheaper to obtain, this allows the model to explore a larger part of the input space, with the same annotation costs. We build our acquisition function on the previously proposed BALD objective for Gaussian Processes, and empirically demonstrate the gains of being able to adjust the annotation precision in the active learning loop.
翻译:当批注预算有限时,可以使用积极学习来选择和说明那些在模型性能方面可能带来最大收益的观测结果。我们建议采用一种积极的学习算法,除了选择给批注的观察结果之外,还选择了获得的批注的精确度。假设低精度的注释比较便宜,这样模型就可以用同样的批注费用来探索较大部分输入空间。我们根据先前提议的高西亚进程BALD目标来构建我们的获取功能,并用经验证明能够调整活跃学习循环中的批注精确度的好处。