Xplorer:一个基于传感器的运动活动预测的视觉分析系统

M. Cavallo, Çağatay Demiralp
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引用次数: 0

摘要

由于可穿戴设备的大量普及,从传感器数据中检测运动活动的任务在广泛的应用中变得越来越普遍。在活动识别预测模型的开发过程中,数据科学家通常依赖于性能指标(如准确率分数)来评估和比较分类算法的性能。虽然这些数值估计代表了一种总结模型有效性的直接方法,但它们对错误分类事件的原因传达的见解很少,不能为数据科学家提供足够的线索来改进他们的算法。本文介绍了BlueSky Xplorer,这是一个交互式可视化系统,用于分析、调试和比较不同粒度级别的多个预测模型的输出。我们将多传感器数据的分类结果与每个传感器的使用背景以及地面真实信息(如文本标签和视频)结合起来,将它们表示为时间对齐的线性轨迹。然后,我们在这些轨道上定义了一种代数语言,使用户能够快速识别分类错误并直观地对分类器的性能进行推理。我们通过将我们的工具应用于一个现实世界的例子来证明它的实用性,包括开发评估帕金森病症状的模型。特别是,我们展示了如何使用Xplorer来改进分类模型的性能,并发现数据时间对齐中的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Xplorer: A system for visual analysis of sensor-based motor activity predictions
Due to the large diffusion of wearable devices, the task of detecting motor activities from sensor data is becoming increasingly common in a wide range of applications. During the development of predictive models for activity recognition, data scientists generally rely on performance metrics (such as accuracy score) for evaluating and comparing the performance of classification algorithms. While these numerical estimates represent a straightforward way to summarize the effectiveness of a model, they convey little insights on the causes of misclassified events, not offering enough clues for data scientists to improve their algorithms. In this paper we present BlueSky Xplorer, an interactive visualization system to analyze, debug and compare the output of multiple predictive models at different levels of granularity. We combine classification results on multi-sensor data with the context of usage of each sensor and with ground truth information (such as textual labels and videos), representing them as temporally-aligned linear tracks. We then define an algebraic language over these tracks that enables users to quickly identify classification errors and to visually reason on the performance of classifiers. We demonstrate the usefulness of our tool by applying it to a real-world example, involving the development of models for assessing the symptoms of Parkinsons disease. In particular, we show how Xplorer was used to improve the performance of classification models and to discover problems in data temporal alignment.
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