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Methodology for improving classification accuracy using ontologies: application in the recognition of activities of daily living

机译:用于使用本体提高分类准确性的方法:在识别日常生活活动中的应用

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摘要

Feature construction and selection are two key factors in the field of machine learning (ML). Usually, these are very time-consuming and complex tasks because the features have to be manually crafted. The features are aggregated, combined or split to create features from raw data. In this paper, we propose a methodology that makes use of ontologies to automatically generate features for the ML algorithms. The features are generated by combining the concepts and relationships that are already in the knowledge base, expressed in form of ontology. The proposed methodology has been evaluated with three different activities of a popular dataset, showing its effectiveness in the recognition of activities of daily living (ADL). The obtained successful results indicate that the use of extended feature vectors provided by the use of ontologies offers a better accuracy, regarding the original feature vectors of the classic approach, where each feature corresponds to the activation of a sensor. Although the classic approach produces classifiers with accuracies above 92%, the proposed methodology improves those results by 1.9%, on average, without adding more information to the dataset.
机译:特征结构和选择是机器学习领域的两个关键因素(ml)。通常,这些是非常耗时和复杂的任务,因为必须手动制作功能。该功能汇总,组合或拆分以创建来自原始数据的功能。在本文中,我们提出了一种利用本体的方法来自动生成ML算法的功能。通过组合已经在知识库中的概念和关系,以本体形式表示的概念和关系来生成特征。拟议的方法已经用三种不同的流行数据集进行了评估,在识别日常生活活动(ADL)方面表现出其有效性。所获得的成功结果表明,使用本体提供的扩展特征向量提供了关于经典方法的原始特征向量的更好的准确性,其中每个特征对应于传感器的激活。虽然经典方法产生具有高于92%的准确性的分类器,但是该方法的方法可以将结果提高1.9%,平均而不会将更多信息添加到数据集。

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