Compositional data, such as human gut microbiomes, consist of non-negative variables whose only the relative values to other variables are available. Analyzing compositional data such as human gut microbiomes needs a careful treatment of the geometry of the data. A common geometrical understanding of compositional data is via a regular simplex. Majority of existing approaches rely on a log-ratio or power transformations to overcome the innate simplicial geometry. In this work, based on the key observation that a compositional data are projective in nature, and on the intrinsic connection between projective and spherical geometry, we re-interpret the compositional domain as the quotient topology of a sphere modded out by a group action. This re-interpretation allows us to understand the function space on compositional domains in terms of that on spheres and to use spherical harmonics theory along with reflection group actions for constructing a compositional Reproducing Kernel Hilbert Space (RKHS). This construction of RKHS for compositional data will widely open research avenues for future methodology developments. In particular, well-developed kernel embedding methods can be now introduced to compositional data analysis. The polynomial nature of compositional RKHS has both theoretical and computational benefits. The wide applicability of the proposed theoretical framework is exemplified with nonparametric density estimation and kernel exponential family for compositional data.
翻译:人类内脏微生物,等构成数据,如人类内脏微生物,由非消极的变量组成,只有这些变量与其他变量的相对值才有。分析合成数据,如人类内脏微生物,需要仔细处理数据的几何学。对组成数据的共同几何理解是通过常规简单x。现有方法的多数依赖对数或权力转换,以克服内在的模拟几何测量法。在这项工作中,根据关键观察,即组成数据在性质上是预测性的,以及预测性和球状几何测量法之间的内在联系,我们重新将组成领域作为由一组行动调整出来的一个域的商数型表层进行解释。这种重新解释使我们能够了解构成域的功能空间,并使用球状调理理论以及用于构建生成成成像的Kerneln Hilbert空间(RKHS)的反射组行动。为未来方法的发展,我们重新将构成域域域的构成作为空间的理论型结构表,目前,以理论型的理论型号结构分析为核心。