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Evolutionary Feature Extraction to Infer Behavioral Patterns in Ambient Intelligence

机译:进化特征提取以推断环境智能中的行为模式

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Machine learning methods have been applied to infer activities of users. However, the small number of training samples and their primitive representation often complicates the learning task. In order to correctly infer inhabitant's behavior a long time of observation and data collection is needed. This article suggests the use of MFE3/GA~(DR), an evolutionary constructive induction method. Constructive induction has been used to improve learning accuracy through transforming the primitive representation of data into a new one where regularities are more apparent. The use of MFE3/GA~(DR) is expected to improve the representation of data and behavior learning process in an intelligent environment. The results of the research show that by applying MFE3/GA~(DR) a standard learner needs considerably less data to correctly infer user's behavior.
机译:机器学习方法已被应用于推断用户的活动。但是,少量的训练样本及其原始表示通常会使学习任务复杂化。为了正确推断居民的行为,需要长时间的观察和数据收集。本文建议使用一种进化的建设性诱导方法MFE3 / GA〜(DR)。构造归纳法已用于通过将数据的原始表示形式转换为规律性更明显的新形式来提高学习准确性。 MFE3 / GA〜(DR)的使用有望在智能环境中改善数据表示和行为学习过程。研究结果表明,通过应用MFE3 / GA〜(DR),标准学习者只需很少的数据即可正确推断用户的行为。

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