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Modeling individual complaint behavior in daily office environment using a novel one-class, multi-linear classifier

机译:使用新颖的一类,多线性分类器对日常办公环境中的个人投诉行为进行建模

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Learning the model of user's thermal complaints in the daily office environment and apply it to the control of Heating, Ventilating, and Air Conditioning (HVAC) is more user-friendly and intelligent. But the modeling of complaint behavior is challenging because of the stochastic complaint time, unbalanced sample sets, individual differences and uncer-tainties. Most existing human comfort models are not feasible under those conditions. In this paper, we propose a novel one-class (complaint only) classifier to model individual human complaints. The method extracts the pareto-frontier set of the samples of each individual and uses a multi-linear classifier to describe the boundary of the complaint region in parameter space. Virtual no-complaint samples are synthesized to calculate the classifiers' false positive rate. Real experimental results show that the method have lower false negative rate than traditional classifiers, which have more significant value in avoiding complaints. We also propose a method to do trade-off between false negative rate and false positive rate.
机译:在日常办公环境中学习用户的热投诉模型并将其应用于加热,通风和空调(HVAC)的控制将更加人性化和智能化。但是,由于投诉时间随机,样本集不平衡,个体差异和不确定性,投诉行为的建模具有挑战性。在这些条件下,大多数现有的人类舒适度模型都不可行。在本文中,我们提出了一种新颖的一类(仅针对投诉)分类器,以对个人的人为投诉进行建模。该方法提取每个个体的样本的边界边界集合,并使用多线性分类器来描述参数空间中投诉区域的边界。合成虚拟无投诉样本以计算分类器的误报率。真实的实验结果表明,该方法的误报率低于传统的分类器,在避免投诉方面具有更重要的价值。我们还提出了一种在假阴性率和假阳性率之间进行权衡的方法。

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