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用karhunen-loeve分析处理剪切图

Processing Shear Maps with Karhunen-Loeve Analysis
课程网址: http://videolectures.net/nipsworkshops2011_vanderplas_processing/  
主讲教师: Jacob VanderPlas
开课单位: 华盛顿大学
开课时间: 2012-01-23
课程语种: 英语
中文简介:
弱引力透镜的宽场探测器有可能解决关于宇宙本质的基本问题。可以将诸如相关函数,功率谱或剪切峰值统计的测量与理论预测进行比较,以回答关于暗物质,暗能量,重力和原始扰动的实质性问题。然而,由于勘测几何,选择函数和其他偏差,数据与理论模型的比较可能受到系统影响。这可以被视为机器学习问题:给定一组稀疏的观测值,如何才能最好地恢复感兴趣的基础信号?我们建议使用基于Karhunen Loeve(KL)信号模型的压缩感知方法来解决这些挑战。该方法可以通过任意掩蔽和测量几何结构有效地从噪声数据中恢复剪切信号。信噪比排名KL矢量允许有效的噪声过滤,导致模拟数据的B模式污染减少30%。此外,由于KL模型基于协方差矩阵,它自然地封装了场的两点信息,并为宇宙学剪切的两点统计的有效贝叶斯似然分析提供了框架。
课程简介: Wide-field probes of weak gravitational lensing have the potential to address fundamental questions about the nature of the universe. Measures such as the correlation function, power spectrum, or statistics of shear peaks can be compared with theoretical predictions to answer substantive question about the nature of dark matter, dark energy, gravity, and primordial perturbations. Comparison of the data to the theoretical model, however, can be subject to systematic effects due to survey geometry, selection functions, and other biases. This can be framed as a machine learning problem: given a sparse set of noisy observations, how can one best recover the underlying signal of interest? We propose to address these challenges using a compressed-sensing approach based on a Karhunen-Loeve (KL) model of the signal. This approach can efficiently recover the shear signal from noisy data with arbitrary masking and survey geometry. The signal-to-noise-ranked KL vectors allow effective noise filtration, leading to a 30% decrease in B-mode contamination for simulated data. Furthermore, because the KL model is based on covariance matrices, it naturally encapsulates the two-point information of the field and provides a framework for efficient Bayesian likelihood analysis of the two-point statistics of a cosmological shear
关 键 词: 宽场探测器; 协方差矩阵; 有效贝叶斯似然分析
课程来源: 视频讲座网
最后编审: 2019-09-08:lxf
阅读次数: 41