使用交互式模拟探索概念漂移

Jeremiah Smith, Naranker Dulay, M. Tóth, O. Amft, Yanxia Zhang
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引用次数: 1

摘要

在机器学习中,概念漂移会导致给定问题的最佳解决方案随着时间的推移而改变,从而导致预测的准确性降低。概念漂移可以是突然的、渐进的或反复出现的。在以人为中心的应用程序中,理解概念漂移的后果尤其重要,因为底层数据和环境的变化是常见的和不可预测的。为了更好地理解不同类型的概念漂移对学习者的不利影响,我们提出了一种新的模拟工具,该工具能够通过在类似游戏的环境中与人类互动,逐步生成具有可定制概念漂移的数据集。我们通过生成和分析受基于身体传感器的长期活动识别启发的概念漂移模拟来说明我们的方法。我们的初步结果表明,目前的无监督自适应技术可能陷入循环错误标记,并且自校准和半监督的混合解决方案比本例中单独采用的任何两种解决方案都更健壮。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring concept drift using interactive simulations
In machine learning, concept drift can cause the optimal solution to a given problem to change as time passes, leading to less accurate predictions. Concept drift can be sudden, gradual or reoccuring. Understanding the consequences of concept drift is particularly important in human-centric applications where changes in the underlying data and environment are common and unexpected. In order to gain a better understanding of the adverse effects of different types of concept drift on learners, we propose a novel simulation tool that is able to incrementally generate datasets with customisable concept drift by interacting with a human in a game-like setting. We illustrate our approach by generating and analysing concept drift simulations inspired by body-sensor based long-term activity recognition. Our initial results show that current unsupervised adaptation techniques can be caught in cyclic mislabelling and that a hybrid solution that is self-calibrating and semi-supervised is more robust than any of the two taken separately for this example.
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