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Dynamic sparse coding for sparse time-series modeling via first-order smooth optimization

机译:通过一阶顺利优化进行稀疏时间序列建模的动态稀疏编码

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摘要

Sparse coding, often called dictionary learning, has received significant attention in the fields of statistical machine learning and signal processing. However, most approaches assume iid data setup, which can be easily violated when the data retains certain statistical structures such as sequences where data samples are temporally correlated. In this paper we formulate a novel dynamic sparse coding problem, and propose an efficient algorithm that enforces smooth dynamics for the latent state vectors (codes) within a linear dynamic model while imposing sparseness of the state vectors. We overcome the added computational overhead originating from smooth dynamic constraints by adopting the recent first-order smooth optimization technique, adjusted for our problem instance. We demonstrate the improved prediction performance of our approach over the conventional sparse coding on several interesting real-world problems including financial asset return data forecasting and human motion estimation from silhouette videos.
机译:稀疏编码,经常被称为字典学习,在统计机器学习和信号处理领域得到了重大关注。然而,大多数方法采用IID数据设置,当数据保留某些统计结构(例如数据样本在时间上相关的序列)时,可以容易地违反。在本文中,我们制定了一种新的动态稀疏编码问题,提出了一种有效的算法,该算法在线性动态模型中强制实施潜在状态向量(码)的平滑动态,同时施加状态向量的稀疏性。我们通过采用最近的一阶顺利优化技术来克服源自顺利动态约束的增加的计算开销,调整了问题实例。我们展示了我们对传统稀疏编码的方法改进了预测性能,以外的几个有趣的真实问题,包括金融资产返回来自剪影视频的数据预测和人体运动估计。

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