Geometry and Topology of Conceptual Representations of Simple Visual Data

S. Dolgikh
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引用次数: 0

Abstract

Representations play an essential role in learning artificial and biological systems by producing informative structures associated with characteristic patterns in the sensory environment. In this work, we examined unsupervised latent representations of images of basic geometric shapes with neural network models of unsupervised generative self-learning. Unsupervised concept learning with generative neural network models. Investigation of structure, geometry and topology in the latent representations of generative models that emerge as a result of unsupervised self-learning with minimization of generative error. Examine the capacity of generative models to abstract and generalize essential data characteristics, including the type of shape, size, contrast, position and orientation. Generative neural network models, direct visualization, density clustering, and probing and scanning of latent positions and regions. Structural consistency of latent representations; geometrical and topological characteristics of latent representations examined and analysed with unsupervised methods. Development and verification of methods of unsupervised analysis of latent representations. Generative models can be instrumental in producing informative compact representations of complex sensory data correlated with characteristic patterns.
简单视觉数据概念表示的几何和拓扑
表征通过在感官环境中产生与特征模式相关的信息结构,在学习人工和生物系统中起着至关重要的作用。在这项工作中,我们使用无监督生成式自学习的神经网络模型研究了基本几何形状图像的无监督潜在表征。基于生成神经网络模型的无监督概念学习。研究生成模型的潜在表征中的结构、几何和拓扑结构,这些模型是由于无监督自学习而产生的,并使生成误差最小化。检验生成模型抽象和概括基本数据特征的能力,包括形状、大小、对比、位置和方向的类型。生成神经网络模型,直接可视化,密度聚类,探测和扫描潜在的位置和区域。潜在表征的结构一致性;用无监督方法检验和分析潜在表征的几何和拓扑特征。潜在表征的无监督分析方法的发展与验证。生成模型可用于生成与特征模式相关的复杂感官数据的信息紧凑表示。
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