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Model Evaluation Approaches for Human Activity Recognition from Time-Series Data

机译:从时间序列数据识别人类活动识别的模型评估方法

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There are many evaluation metrics and methods that can be used to quantify and predict a model's future performance on previously unknown data. In the area of Human Activity Recognition (HAR), the methodology used to determine the training, validation, and test data can have a significant impact on the reported accuracy. HAR data sets typically contain few test subjects with the data from each subject separated into fixed-length segments. Due to the potential leakage of subject-specific information into the training set, cross-validation techniques can yield erroneously high classification accuracy.
机译:有许多评估指标和方法可用于量化和预测模型在先前未知的数据上的未来性能。 在人类活动识别(Har)的区域中,用于确定培训,验证和测试数据的方法可能对报告的准确性产生重大影响。 HAR数据集通常包含少量测试对象,其中每个受试者分离成固定长度段的数据。 由于对象特定信息的潜在泄漏到训练集中,交叉验证技术可以产生错误的高分类精度。

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