通过影响函数进行可靠的主动学习。

Meng Xia, Ricardo Henao
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引用次数: 0

摘要

由于收集标记数据的高成本和耗时性质,标记数据不足是一个常见的挑战,当应用于实际应用时,可能会对深度学习模型的性能产生负面影响。主动学习(AL)旨在通过在模型训练过程中选择有价值的样本来减少获得标记数据所需的成本和时间。然而,最近的研究指出,现有的人工智能算法在不同场景下对深度学习(DL)架构的性能不可靠,表现为它们的性能与基本随机选择相当(甚至更差)。这种行为损害了这些方法的适用性。我们通过为DL架构提出一个理论上有动机的ai框架来解决这个问题。我们证明了模型最有价值的样本是那些毫不奇怪地提高其在整个数据集上的性能的样本,其中大部分数据集是未标记的,并提出了一个框架,通过影响函数、伪标签和多样性选择有效地估计这种性能(或损失)。实验结果表明,所提出的基于影响函数的可靠主动学习方法(RALIF)可以持续优于随机选择基线以及其他现有和最先进的主动学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliable Active Learning via Influence Functions.

Due to the high cost and time-consuming nature of collecting labeled data, having insufficient labeled data is a common challenge that can negatively impact the performance of deep learning models when applied to real-world applications. Active learning (AL) aims to reduce the cost and time required for obtaining labeled data by selecting valuable samples during model training. However, recent works have pointed out the performance unreliability of existing AL algorithms for deep learning (DL) architectures under different scenarios, which manifests as their performance being comparable (or worse) to that of basic random selection. This behavior compromises the applicability of these approaches. We address this problem by proposing a theoretically motivated AL framework for DL architectures. We demonstrate that the most valuable samples for the model are those that, unsurprisingly, improve its performance on the entire dataset, most of which is unlabeled, and present a framework to efficiently estimate such performance (or loss) via influence functions, pseudo labels and diversity selection. Experimental results show that the proposed reliable active learning via influence functions (RALIF) can consistently outperform the random selection baseline as well as other existing and state-of-the art active learning approaches.

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