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Ensemble Learning Using Matrices of Classifier Interactions and Decision Profiles on Riemannian and Grassmann Manifolds

机译:使用分类器交互的矩阵和Riemannian和Grassmann歧管的矩阵学习

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This paper introduces a new topic and research of geometric classifier ensemble learning using two types of objects: classifier prediction pairwise matrix (CPPM) and decision profiles (DPs). Learning from CPPM requires using Riemannian manifolds (R-manifolds) of symmetric positive definite (SPD) matrices. DPs can be used to build a Grassmann manifold (G-manifold). Experimental results show that classifier ensembles and their cascades built using R-manifolds are less dependent on some properties of individual classifiers (e.g. depth of decision trees in random forests (RFs) or extra trees (ETs)) in comparison to G-manifolds and Euclidean geometry. More independent individual classifiers allow obtaining R-manifolds with better properties for classification. Generally, the accuracy of classification in nonlinear geometry is higher than in Euclidean one. For multi-class problems, G-manifolds perform similarly to stacking-based classifiers built on R-manifolds of SPD matrices in terms of classification accuracy.
机译:本文介绍了一种使用两种对象的几何分类器集合学习的新主题和研究:分类器预测成对矩阵(CPPM)和决策配置文件(DPS)。从CPPM学习使用对称正定(SPD)矩阵的Riemannian歧管(R-歧管)。 DPS可用于构建基层歧管(G-歧管)。实验结果表明,与G-歧管和欧几里德相比,使用R-歧管的分类器集合及其级联依赖于各个分类器的某些性质(例如随机森林(RFS)或额外的树木(ETS)的深度)几何学。更独立的单个分类器允许获得R-歧管,具有更好的分类属性。通常,非线性几何形状的分类的准确性高于欧几里德1。对于多级问题,G-歧管类似地执行基于基于堆叠的分类器,基于SPD矩阵的R-歧管在分类精度方面。

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