Bayesian Nominal Matrix Factorization for Mining Daily Activity Patterns

Chen Li, W. K. Cheung, Jiming Liu, J. Ng
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引用次数: 2

Abstract

With the advent of the Internet of things (IoT) and smart sensor technologies, the data-driven paradigm has been found promising to support human behavioral analysis in a smart home for better healthcare and well-being of senior adults. This work focuses on discovering daily activity routines from sensor data collected in a smart home. By representing the sensor data as a matrix, daily activity routines can be identified using matrix factorization methods. The key challenge rests on the fact that the matrix contains discrete labels as its elements, and decomposing the nominal data matrix into basis vectors of the labels is nontrivial. We propose a novel principled methodology to tackle the nominal matrix factorization problem. Assuming that the similarity matrix of the labels is known, the discrete labels are first projected onto a continuous space with the interlabel distance preserving the given similarity matrix of the labels as far as possible. Then, we extend a hierarchical probabilistic model for ordinal matrix factorization with Bayesian Lasso that the factorization can be more robust to noise and more sparse to ease human interpretation. Our experimental results based on a synthetic data set shows that the factorization results obtained using the proposed methodology outperform those obtained using a number of the state-of-the-art factorization methods in terms of the basis vector reconstruction accuracy. We also applied our model to a publicly available smart home data set to illustrate how the proposed methodology can be used to support daily activity routine analysis.
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基于贝叶斯标称矩阵分解的日常活动模式挖掘
随着物联网(IoT)和智能传感器技术的出现,数据驱动范式有望支持智能家居中的人类行为分析,以改善老年人的医疗保健和福祉。这项工作的重点是从智能家居中收集的传感器数据中发现日常活动惯例。通过将传感器数据表示为矩阵,可以使用矩阵分解方法识别日常活动例程。关键的挑战在于矩阵包含离散标签作为其元素的事实,并且将标称数据矩阵分解为标签的基向量是非平凡的。我们提出了一种新的原则性方法来解决标称矩阵分解问题。假设标签的相似矩阵已知,首先将离散标签投影到连续空间上,标签间距离尽可能保持给定标签的相似矩阵。然后,我们用贝叶斯拉索扩展了有序矩阵分解的层次概率模型,使得分解对噪声的鲁棒性更强,并且更稀疏,以方便人类的解释。我们基于合成数据集的实验结果表明,就基向量重建精度而言,使用所提出的方法获得的分解结果优于使用许多最先进的分解方法获得的结果。我们还将我们的模型应用于公开可用的智能家居数据集,以说明所提出的方法如何用于支持日常活动例行分析。
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