论文标题

自动编码星系光谱I:建筑

Autoencoding Galaxy Spectra I: Architecture

论文作者

Melchior, Peter, Liang, Yan, Hahn, ChangHoon, Goulding, Andy

论文摘要

我们介绍了神经网络体系结构spender,作为用于分析,代表和创建星系光谱的核心可区分构件。它结合了卷积编码器,该编码器将注意力高达256个光谱特征,并将它们压缩到低维的潜在空间中,并产生一个restframe表示的解码器,其光谱范围和分辨率超过了观测仪器的仪器。解码器之后是显式红移,重新采样和卷积转换以匹配观测值。该体系结构在任意红移时采用星系光谱,并且对天际线减法的残留物等故障非常健壮,因此可以直接摄入大型调查中的光谱而无需额外的预处理。我们通过对整个SDSS-II的光谱星系样品进行训练来证明spender的性能;表明其能够创建高度准确的重建,并大大减少噪声;对分辨[OII]双重组的超分辨率模型执行反卷积和过采样;引入一种新颖的方法,将注意力重量解释为重要光谱特征的代理;并推断潜在空间中代表的主要自由度。我们最后讨论了未来的改进和应用。

We introduce the neural network architecture SPENDER as a core differentiable building block for analyzing, representing, and creating galaxy spectra. It combines a convolutional encoder, which pays attention to up to 256 spectral features and compresses them into a low-dimensional latent space, with a decoder that generates a restframe representation, whose spectral range and resolution exceeds that of the observing instrument. The decoder is followed by explicit redshift, resampling, and convolution transformations to match the observations. The architecture takes galaxy spectra at arbitrary redshifts and is robust to glitches like residuals of the skyline subtraction, so that spectra from a large survey can be ingested directly without additional preprocessing. We demonstrate the performance of SPENDER by training on the entire spectroscopic galaxy sample of SDSS-II; show its ability to create highly accurate reconstructions with substantially reduced noise; perform deconvolution and oversampling for a super-resolution model that resolves the [OII] doublet; introduce a novel method to interpret attention weights as proxies for important spectral features; and infer the main degrees of freedom represented in the latent space. We conclude with a discussion of future improvements and applications.

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