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VAIM-CFF: A Variational Autoencoder Inverse Mapper Solution to Compton Form Factor Extraction from Deeply Virtual Exclusive Reactions

The European Physical Journal C(2025)

Jouf University | Old Dominion University | Argonne National Laboratory | University of Virginia | Michigan State University

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Abstract
We develop a new methodology for extracting Compton form factors (CFFs) from deeply virtual exclusive reactions such as the unpolarized DVCS cross section using a specialized inverse problem solver, a variational autoencoder inverse mapper (VAIM). The VAIM-CFF framework not only allows us access to a fitted solution set possibly containing multiple solutions in the extraction of all 8 CFFs from a single cross section measurement, but also accesses the lost information contained in the forward mapping from CFFs to cross section. We investigate various assumptions and their effects on the predicted CFFs such as cross section organization, number of extracted CFFs, use of uncertainty quantification technique, and inclusion of prior physics information. We then use dimensionality reduction techniques such as principal component analysis to visualize the missing physics information tracked in the latent space of the VAIM framework. Through re-framing the extraction of CFFs as an inverse problem, we gain access to fundamental properties of the problem not comprehensible in standard fitting methodologies: exploring the limits of the information encoded in deeply virtual exclusive experiments.
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要点】:该论文提出了一种新的方法VAIM-CFF,通过变分自编码器逆映射器从深度虚拟独家反应中提取康普顿形式因子,允许获取包含多个解决方案的拟合解决方案集合,并访问在正向映射中丢失的信息。

方法】:该方法采用变分自编码器逆映射器(VAIM)作为专门的逆问题求解器,从单个横截面测量中提取所有8个CFFs。

实验】:研究了各种假设及其对预测CFFs的影响,包括横截面组织、提取的CFF数量、使用不确定度量化技术以及包含先验物理信息。使用主成分分析等维度减少技术可视化在VAIM框架的潜在空间中跟踪的缺失物理信息。通过将CFF提取重新定义为逆问题,我们可以访问在标准拟合方法中无法理解的问题的基本属性:探索 deeply virtual exclusive experiments 编码信息的极限。