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Convex Hull Convolutive Non-negative Matrix Factorization for Uncovering Temporal Patterns in Multivariate Time-Series Data

机译:Convex HULL复卷循环非负矩阵分解,用于揭示多变量时间序列数据中的时间模式

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We propose the Convex Hull Convolutive Non-negative Matrix Factorization (CH-CNMF) algorithm to learn temporal patterns in multivariate time-series data. The algorithm factors a data matrix into a basis tensor that contains temporal patterns and an activation matrix that indicates the time instants when the temporal patterns occurred in the data. Importantly, the temporal patterns correspond closely to the observed data and represent a wide range of dynamics. Experiments with synthetic data show that the temporal patterns found by CH-CNMF match the data better and provide more meaningful information than the temporal patterns found by Convolutive Non-negative Matrix Factorization with sparsity constraints (CNMF-SC). Additionally, CH-CNMF applied on vocal tract constriction data yields a wider range of articulatory gestures compared to CNMF-SC. Moreover, we find that the gestures comprising the CH-CNMF basis generalize better to unseen data and capture vocal tract structure and dynamics significantly better than those comprising the CNMF-SC basis.
机译:我们提出了凸壳卷积非负矩阵分解(CH-CNMF)算法,用于学习多变量时间序列数据中的时间模式。该算法将数据矩阵中的基础矩阵中包含时间模式的基础矩阵和激活矩阵,该激活矩阵指示在数据中发生时间模式时的时间时刻。重要的是,时间模式对应于观察到的数据并表示广泛的动态。合成数据的实验表明,CH-CNMF发现的时间模式更好地匹配数据并提供比具有稀疏性约束(CNMF-SC)的卷曲非负矩阵分解的时间模式提供更有意义的信息。此外,与CNMF-SC相比,施加在声带收缩数据上的CH-CNMF产生更广泛的明晰度手势。此外,我们发现包括CH-CNMF基础的手势更好地推广到未经CNMF-SC的数据和捕获声音结构和动力学显着更好。

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