生物序列空间上的学习函数:高斯过程先验、正则化和规范固定。

Samantha Petti, Carlos Martí-Gómez, Justin B Kinney, Juannan Zhou, David M McCandlish
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引用次数: 0

摘要

从生物序列(DNA, RNA,蛋白质)映射到序列功能的定量测量在当代生物学中起着重要作用。我们感兴趣的相关任务是(i)推断预测性序列到函数映射和(ii)分解序列函数映射以阐明单个子序列的贡献。由于每个序列函数映射可以以多种方式写成子序列的加权和,因此有意义地解释这些权重需要“量规固定”,即为每个映射定义唯一的表示。最近的研究表明,在一个过度参数化的“权重空间”中,大多数现有的规范固定表示都是$ l_2正则化回归的唯一解,其中正则化器的选择定义了规范。在这里,我们建立了在过参数化权重空间中的正则化回归和在“函数空间”中操作的高斯过程方法之间的关系,即在有限序列集合上的所有实值函数的空间。我们解开了权重空间正则化器如何在学习函数上施加隐式先验并将最优权重限制在特定规范上。我们还展示了如何构造与任意显式高斯过程先验相对应的正则化器,并结合了各种各样的量规。接下来,我们推导了高斯过程后验所隐含的标准固定权的分布,并证明即使对于长序列,这种分布也可以使用核技巧有效地计算乘积核先验。最后,我们描述了与最常见的权重空间正则化器相关的隐式函数空间先验。总的来说,我们的框架统一并扩展了我们推断和解释序列-函数关系的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On learning functions over biological sequence space: relating Gaussian process priors, regularization, and gauge fixing.

Mappings from biological sequences (DNA, RNA, protein) to quantitative measures of sequence functionality play an important role in contemporary biology. We are interested in the related tasks of (i) inferring predictive sequence-to-function maps and (ii) decomposing sequence-function maps to elucidate the contributions of individual subsequences. Because each sequence-function map can be written as a weighted sum over subsequences in multiple ways, meaningfully interpreting these weights requires "gauge-fixing," i.e., defining a unique representation for each map. Recent work has established that most existing gauge-fixed representations arise as the unique solutions to$L_2-regularized regression in an overparameterized "weight space'" where the choice of regularizer defines the gauge. Here, we establish the relationship between regularized regression in overparameterized weight space and Gaussian process approaches that operate in "function space,'' i.e. the space of all real-valued functions on a finite set of sequences. We disentangle how weight space regularizers both impose an implicit prior on the learned function and restrict the optimal weights to a particular gauge. We also show how to construct regularizers that correspond to arbitrary explicit Gaussian process priors combined with a wide variety of gauges. Next, we derive the distribution of gauge-fixed weights implied by the Gaussian process posterior and demonstrate that even for long sequences this distribution can be efficiently computed for product-kernel priors using a kernel trick. Finally, we characterize the implicit function space priors associated with the most common weight space regularizers. Overall, our framework unifies and extends our ability to infer and interpret sequence-function relationships.

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