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Combined Fuzzy State Q-learning Algorithm to predict Context Aware User Activity under uncertainty in Assistive Environment

机译:组合模糊状态Q学习算法预测辅助环境下不确定性下的背景感知用户活动

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In an Assistive Environment (AE), where dependant users are living together, predicting future User Activity is a challenging task and in the same time useful to anticipate critical situation and provide on time assistance. The present paper analyzes prerequisites for user-centred prediction of future Activities and presents an algorithm for autonomous context aware User Activity prediction, based on our proposed combined Fuzzy-State Q- Learning algorithm as well as on some established methods for data-based prediction. Our combined algorithm achieves 20% accuracy better than the Q-learning algorithm. Our results based real data evaluation not only confirm the state of the art of the value added of fuzzy state to decrease the negative effect of uncertainty data trained by a probabilistic method but also enable just on time assistance to the User.
机译:在辅助环境(AE)中,依赖用户生活在一起,预测未来的用户活动是一个具有挑战性的任务,并且在同一时间内有助于预测批判性情况并提供时间辅助。本文分析了对未来活动的用户中心预测的先决条件,并提出了一种基于我们所提出的组合模糊状态Q学习算法的自主语境意识的用户活动预测算法,以及一些基于数据的预测的一些建立的方法。我们的组合算法比Q学习算法更好地实现了20%的精度。我们的结果基于实际数据评估不仅确认了模糊状态所添加的值的最新状态,以减少由概率方法训练的不确定性数据的负效应,而且还可以按时向用户提供帮助。

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