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Adaptive Ensemble Prediction for Deep Neural Networks based on Confidence Level

机译:基于置信度的深层神经网络自适应集成预测

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Ensembling multiple predictions is a widely used technique for improving the accuracy of various machine learning tasks. One obvious drawback of ensembling is its higher execution cost during inference. In this paper, we first describe our insights on the relationship between the probability of prediction and the effect of ensembling with current deep neural networks; ensembling does not help mispredictions for inputs predicted with a high probability even when there is a non-negligible number of mispredicted inputs. This finding motivated us to develop a way to adaptively control the ensembling. If the prediction for an input reaches a high enough probability, i.e., the output from the softmax function, on the basis of the confidence level, we stop ensembling for this input to avoid wasting computation power. We evaluated the adaptive ensembling by using various datasets and showed that it reduces the computation cost significantly while achieving accuracy similar to that of static ensembling using a pre-defined number of local predictions. We also show that our statistically rigorous confidence-level-based early-exit condition reduces the burden of task-dependent threshold tuning better compared with naive early exit based on a pre-defined threshold in addition to yielding a better accuracy with the same cost.
机译:组合多个预测是一种用于提高各种机器学习任务的准确性的广泛使用的技术。集合的一个明显缺点是推理过程中执行成本较高。在本文中,我们首先描述我们对预测概率与当前深度神经网络集成效果之间关系的见解;即使存在不可忽略的数量错误的输入,合计也不会有助于以高概率预测输入的错误。这一发现促使我们开发了一种自适应控制集合的方法。如果对输入的预测达到足够高的概率(即softmax函数的输出),则基于置信度,我们将停止对该输入进行汇总以避免浪费计算能力。我们通过使用各种数据集评估了自适应合奏,并显示出它可以显着降低计算成本,同时达到与使用预定义数量的局部预测的静态合奏相似的准确性。我们还表明,与基于预定义阈值的天真的提前退出相比,基于统计严格的基于置信度的提前退出条件可以更好地减轻与任务相关的阈值调整的负担,并且可以在相同成本下产生更高的准确性。

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