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An empirical investigation into the inconsistency of sequential active learning

机译:对序贯主动学习的不一致性的实证研究

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In active learning, one aims to acquire labeled samples that are particularly useful for training a classifier. In sequential active learning, this sample selection is done in a one-at-a-time manner where the choice of sample t + 1 may depend on the current state of the classifier and the t labeled data points already available. In their deviation from standard random sampling, current active learning schemes typically introduce severe sampling bias. Even though this fact has been acknowledged in the more theoretical contributions covering active learning, the more popular approaches largely ignore this bias. This work empirically investigates the consequences of their actions and sets out to identify the pros and cons of this way of dealing with the problem of active learning. Even though current techniques can provide excellent approaches to learning, we conclude that they provide inconsistent solutions and therefore, in a strict sense, do not solve the problem of active learning.
机译:在主动学习中,一个目标是获取对训练分类器特别有用的标记样本。在顺序主动学习中,以一次一次的方式进行样本选择,其中样本t + 1的选择可能取决于分类器的当前状态和已有的标记t个数据点。当前的主动学习方案与标准随机抽样不同,通常会引入严重的抽样偏差。尽管这一事实已在涵盖主动学习的更多理论贡献中得到了认可,但更流行的方法在很大程度上忽略了这一偏见。这项工作从经验上调查了他们的行动的后果,并着手确定这种应对主动学习问题的方式的利弊。尽管当前的技术可以提供出色的学习方法,但我们得出的结论是,它们提供了不一致的解决方案,因此从严格的意义上讲,它们并不能解决主动学习的问题。

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