In mathematics, morphism is a term that indicates structure-preserving mappings between mathematical structures of the same type. Linear transformations for linear spaces, homomorphisms for algebraic structures and continuous functions for topological spaces are examples. Many data researched in machine learning, on the other hand, can include mathematical structures in them. Strings are totally ordered sets, and trees can be understood not only as graphs but also as partially ordered sets with respect to an ancestor-to-descendent order and semigroups with respect to the binary operation to determine nearest common ancestor. In this paper, we propose a generic and theoretic framework to investigate similarity of structured data through stru...
Near-regular structures are common in manmade and natural objects. Al-gorithmic detection of such re...
Kernel methods are a class of non-parametric learning techniques relying on kernels. A kernel genera...
Abstract. In this paper, we describe the use of concepts from structural and sta-tistical pattern re...
In mathematics, morphism is a term that indicates structure-preserving mappings between mathematical...
In this paper we define the concept of the Machine Learning Morphism (MLM) as a fundamental building...
Abstract. Many kinds of morphisms on Petri nets have been defined and studied. They can be used as f...
Graph matching is a classical problem in pattern recog-nition with many applications, particularly w...
This thesis is divided into a theoretical part, aimed at developing statements around the newly intr...
Structure learning is a core problem in AI central to the fields of neuro-symbolic AI and statistica...
This document introduces a combinatorial theory of homology, a topological descriptor of shape. The ...
AbstractBranching structures, alias topological tree structures are fundamental to any hierarchical ...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
Recently there has been an increasing number of learning problems arising in complex data domains, l...
Abstract. Morphisms constitute a general tool for modelling complex relation-ships between mathemati...
Near-regular structures are common in manmade and natural objects. Al-gorithmic detection of such re...
Kernel methods are a class of non-parametric learning techniques relying on kernels. A kernel genera...
Abstract. In this paper, we describe the use of concepts from structural and sta-tistical pattern re...
In mathematics, morphism is a term that indicates structure-preserving mappings between mathematical...
In this paper we define the concept of the Machine Learning Morphism (MLM) as a fundamental building...
Abstract. Many kinds of morphisms on Petri nets have been defined and studied. They can be used as f...
Graph matching is a classical problem in pattern recog-nition with many applications, particularly w...
This thesis is divided into a theoretical part, aimed at developing statements around the newly intr...
Structure learning is a core problem in AI central to the fields of neuro-symbolic AI and statistica...
This document introduces a combinatorial theory of homology, a topological descriptor of shape. The ...
AbstractBranching structures, alias topological tree structures are fundamental to any hierarchical ...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
Recently there has been an increasing number of learning problems arising in complex data domains, l...
Abstract. Morphisms constitute a general tool for modelling complex relation-ships between mathemati...
Near-regular structures are common in manmade and natural objects. Al-gorithmic detection of such re...
Kernel methods are a class of non-parametric learning techniques relying on kernels. A kernel genera...
Abstract. In this paper, we describe the use of concepts from structural and sta-tistical pattern re...