Technical Perspective: Efficient Signal Reconstruction for a Broad Range of Applications

Z. Ives
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Abstract

When problems are scaled to "big data," researchers must often come up with new solutions, leveraging ideas from multiple research areas - as we frequently witness in today's big data techniques and tools for machine learning, bioinformatics, and data visualization. Beyond these heavily studied topics, there exist other classes of general problems that need to be rethought at scale. One such problem is that of large-scale signal reconstruction [4]: taking a set of observations of relatively low dimensionality, and using them to reconstruct a high-dimensional, unknown signal. This class of problems arises when we can only observe a subset of a complex environment that we are seeking to model - for instance, placing a few sensors and using their readings to reconstruct an environment's temperature, or monitoring multiple points in a network and using the readings to estimate end-to-end network traffic, or using 2D slices to reconstruct a 3D image.
技术观点:广泛应用的高效信号重构
当问题被扩展到“大数据”时,研究人员必须经常提出新的解决方案,利用来自多个研究领域的想法——正如我们在今天的大数据技术和机器学习、生物信息学和数据可视化工具中经常看到的那样。除了这些被大量研究的主题之外,还有其他类型的一般问题需要大规模地重新思考。其中一个问题就是大规模信号重建[4]:获取一组相对低维的观测值,并用它们来重建一个高维的未知信号。当我们只能观察到我们正在寻求建模的复杂环境的一个子集时,这类问题就会出现——例如,放置几个传感器并使用它们的读数来重建环境的温度,或者监控网络中的多个点并使用读数来估计端到端网络流量,或者使用2D切片来重建3D图像。
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