Avoiding subtraction and division of stochastic signals using normalizing flows: NFdeconvolve.

ArXiv Pub Date : 2025-01-14
Pedro Pessoa, Max Schweiger, Lance W Q Xu, Tristan Manha, Ayush Saurabh, Julian Antolin Camarena, Steve Pressé
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Abstract

Across the scientific realm, we find ourselves subtracting or dividing stochastic signals. For instance, consider a stochastic realization, $x$, generated from the addition or multiplication of two stochastic signals $a$ and $b$, namely $x=a+b$ or $x = ab$. For the $x=a+b$ example, $a$ can be fluorescence background and $b$ the signal of interest whose statistics are to be learned from the measured $x$. Similarly, when writing $x=ab$, $a$ can be thought of as the illumination intensity and $b$ the density of fluorescent molecules of interest. Yet dividing or subtracting stochastic signals amplifies noise, and we ask instead whether, using the statistics of $a$ and the measurement of $x$ as input, we can recover the statistics of $b$. Here, we show how normalizing flows can generate an approximation of the probability distribution over $b$, thereby avoiding subtraction or division altogether. This method is implemented in our software package, NFdeconvolve, available on GitHub with a tutorial linked in the main text.

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使用归一化流避免随机信号的减法和除法:NFdeconvolve。
在整个科学领域,我们发现自己在减或除随机信号。例如,考虑一个随机实现,$x$,由两个随机信号$a$和$b$的加法或乘法生成,即$x=a+b$或$x= ab$。对于$x=a+b$的例子,$a$可以是荧光背景,$b$是感兴趣的信号,其统计信息将从测量的$x$中学习。同样地,当写$x=ab$时,$a$可以被认为是照明强度,$b$是感兴趣的荧光分子的密度。然而,对随机信号进行除法或减法都会放大噪声,因此我们要问的是,使用a的统计数据和x的测量数据作为输入,我们是否可以恢复b的统计数据。在这里,我们展示了规范化流如何生成$b$上的概率分布的近似值,从而完全避免了减法或除法。这个方法是在我们的软件包NFdeconvolve中实现的,在GitHub上有一个教程链接在主要文本中。
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