Convex PCA, which was introduced by Bigot et al., is a dimension reduction methodology for data with values in a convex subset of a Hilbert space. This setting arises naturally in many applications, including distributional data in the Wasserstein space of an interval, and ranked compositional data under the Aitchison geometry. Our contribution in this paper is threefold. First, we present several new theoretical results including consistency as well as continuity and differentiability of the objective function in the finite dimensional case. Second, we develop a numerical implementation of finite dimensional convex PCA when the convex set is polyhedral, and show that this provides a natural approximation of Wasserstein geodesic PCA. Third, we illustrate our results with two financial applications, namely distributions of stock returns ranked by size and the capital distribution curve, both of which are of independent interest in stochastic portfolio theory.
翻译:由Bigot等人介绍的Convex PCCA是Hilbert空间一个子节中带有数值的数据的维度减少方法。这种设置自然在许多应用中产生,包括瓦塞斯坦空间的分布数据,以及Aitchison几何法下排列的构成数据。我们在本文中的贡献有三重。首先,我们介绍了一些新的理论结果,包括有限维度案例中目标功能的一致性、连续性和可变性。第二,我们开发了在二次曲线集成时的有限维度CCPA数字应用,并表明它提供了瓦塞斯坦大地测量五氯苯甲醚的自然近似值。第三,我们用两种财务应用来说明我们的结果,即按大小和资本分布曲线排列的股票回报分布,两者都对随机组合理论有独立的兴趣。