流数据的可重构和基于元素的基于ci的变更检测测试

G. Boracchi, M. Roveri
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引用次数: 4

摘要

检测数据生成过程中的变化是具有计算智能能力的自适应和灵活系统的主要要求。为了在不断变化或动态的环境中保持/提高其性能,这些系统必须检测数据生成过程中的任何变化,并做出反应并适应新的操作条件。检测数据流中变化的问题通常是通过变化检测测试(CDTs)来解决的,最近,基于置信区间相交(ICI)规则的CDTs家族已经被提出。基于ci的CDTs通过从非重叠数据窗口提取高斯分布特征来监控数据流。这种窗口操作模式的缺点是结构延迟,当变化幅度很大时,这一点尤为明显。我们提出了一种新的基于ci的CDT,通过对所获取的数据进行高斯变换,以元素方式操作,克服了这个问题。这种基于元素的CDT的特点是具有较高的变化检测能力和较低的计算复杂度,这使得它适合在低功耗嵌入式系统上执行。建议的CDT还提供了一个重新配置机制,在任何检测到的变化之后,允许CDT在新的工作条件下重新配置,以检测进一步的变化。广泛的实验活动表明了所提出的元素智能CDT在合成和真实数据集上的有效性。
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A reconfigurable and element-wise ICI-based change-detection test for streaming data
Detecting changes in data-generating processes is a primary requirement for adaptive and flexible systems endowed with computational intelligence abilities. In order to maintain/improve their performance in evolving or dynamic environments, these systems have to detect any variation in the data-generating process and react and adapt to the new operating conditions. The problem of detecting changes in streams of data is generally addressed by means of Change-Detection Tests (CDTs) and, recently, a family of CDTs based on the Intersection-of-Confidence-Interval (ICI) rule has been presented. ICI-based CDTs monitor data streams by extracting Gaussian distributed features from non-overlapping data windows. The drawback of such a window-wise operational mode is a structural delay, which is particularly evident when the change magnitude is large. We present a novel ICI-based CDT that overcomes this problem by operating in an element-wise manner thanks to a Gaussian transform of the acquired data. Such an element-wise CDT is characterized by a high change-detection ability and a reduced computational complexity, which makes it suitable for the execution on low-power embedded systems. The proposed CDT is also provided with a reconfiguration mechanism that, after any detected change, allows the CDT to be reconfigured on the new working conditions to detect further changes. A wide experimental campaign shows the effectiveness of the proposed element-wise CDT both on synthetic and real datasets.
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