非平稳数据流中标签的稀缺性研究

Conor Fahy, Shengxiang Yang, Mario Gongora
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引用次数: 12

摘要

在动态流中,有一个假设,即产生流的潜在过程是非平稳的,并且流中的概念将随着流的进展而漂移和变化。通过分类模型学习的概念很容易发生变化,而非自适应模型很可能随着时间的推移而恶化并变得无效。识别流中的变化并对其做出反应的挑战,由于标签的稀缺性问题而变得更加复杂。这指的是一种非常现实的情况,在这种情况下,传入点的真实类标签不能立即可用(或者可能永远不可用),或者手动注释数据点的成本非常高。在高速流中,可能不可能手动标记每个传入点并采用完全监督的方法。在本文中,我们将正式描述可能发生在数据流中的变更类型,然后在对标签的访问受限时对处理变更的方法进行编目。我们概述了该领域最具影响力的思想以及最近的进展,并强调了趋势、研究差距和未来的研究方向。
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Scarcity of Labels in Non-Stationary Data Streams: A Survey
In a dynamic stream there is an assumption that the underlying process generating the stream is non-stationary and that concepts within the stream will drift and change as the stream progresses. Concepts learned by a classification model are prone to change and non-adaptive models are likely to deteriorate and become ineffective over time. The challenge of recognising and reacting to change in a stream is compounded by the scarcity of labels problem. This refers to the very realistic situation in which the true class label of an incoming point is not immediately available (or might never be available) or in situations where manually annotating data points are prohibitively expensive. In a high-velocity stream, it is perhaps impossible to manually label every incoming point and pursue a fully supervised approach. In this article, we formally describe the types of change, which can occur in a data-stream and then catalogue the methods for dealing with change when there is limited access to labels. We present an overview of the most influential ideas in the field along with recent advancements and we highlight trends, research gaps, and future research directions.
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